disscusion - Management
Question 1
Which of the following theories argues that minority influence and majority influence are all through one common underlying mechanism?
Select one:
a.Expectancy Violation Theory
b.Self-efficacy Theory
c.Divergent Theory
d.Conversion Theory
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John found that after listening to the opinion of a member’s of out-group, people changed their opinion away from the out-group member. Which theory explains this phenomenon the best?
Select one:
a.Inter-group avoidance
b.Self-categorization theory
c.Conversion theory
d.Double minority theory
e.Social exchange theory
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Which one of the following statements is true regarding Nemeth’s argument on convergent vs. divergent thinking process involving majority and minority influence?
Select one:
a.The model holds a single process view.
b.Convergent thinking process lead to increased persuasion.
c.The model explains why ingroup minority exert greater influence than outgroup minority.
d.The model argues only minority influence triggers a thoughtful response.
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Which one of the following factors are not the causes of shared information bias?
Select one:
a.Law of numbers
b.Social validation
c.Rehearsal effect
d.Division of labor
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Which one of the following statement is TRUE regarding shared versus unshared information?
Select one:
a.Shared information is less likely to be repeated during group discussion.
b.Shared information is less likely to be recalled after group discussion.
c.Unshared information receives less suspicion from fellow group members.
d.Unshared information more likely to be discussed in the later stage of group discussion.
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Based on Kozlowski and Kleins explanation for Composition vs. Compilation, provide a detailed example where a teams performance emerges through the composition process (a) and a detailed example where teams performance emerges through the compilation process (b).
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Explain your teamwork experience using one concept covered by any of the readings for this week (a). Come up with potential discussion question(s) from the readings for this week (b).
Contents lists available at ScienceDirect
Organizational Behavior and Human Decision Processes
journal homepage: www.elsevier.com/locate/obhdp
Thanks for your ideas: Gratitude and team creativity
Nashita Pillaya,1, Guihyun Parkb,⁎,1, Ye Kang Kimc, Sujin Leec,⁎
a Set Apart, 2 Havelock Road #04-15, Singapore S059763, Singapore
b Australian National University, Australia
c Korea Advanced Institute of Science and Technology, South Korea
A B S T R A C T
Many ideas and products are borne out of collaborative efforts among members of teams and workgroups, and thus finding ways to improve team creativity is of
significant interest. Adopting a collective information processing perspective, we argue that gratitude intervention for teams would serve as a powerful facilitator for
information elaboration—whereby team members engage in more deliberate and thorough integration of others’ ideas—and, in turn, enhance team creativity. Study
1 found that teams in the gratitude condition increased information elaboration more than those in the neutral condition. Study 2 compared teams in gratitude
emotion and teams in positive emotion in general. Teams in the gratitude condition generated highly creative ideas, due to more information elaboration. On the
other hand, teams in the positive emotion condition expressed greater enthusiasm and confidence in their ideas and immediately accepted the ideas suggested, which
led to an increase in the quantity of ideas. Our findings suggest that gratitude facilitates intellectual exchange in groups, which in turn enhances team creativity. We
discuss our findings’ implications for team creativity and potential directions for future research.
1. Thanks for your ideas: Gratitude and team creativity
Teams that achieve a high level of creative performance often find
that their creative process is more like a journey filled with obstacles
and uncertainties, in which members encourage, challenge, and de-
velop each other’s ideas, continually deepen their understanding of the
issue, and improve their solutions (Hargadon & Bechky, 2006; Harvey,
2014; Kurtzberg & Amabile, 2001). Given the nature of a creative task,
no set routine serves as a checklist; specific individual contributions
cannot be anticipated nor a clear outcome guaranteed. Creative teams
often rely on each other’s knowledge and perspective as much as on the
benevolence and prosocial intentions fueled by heartfelt recognition
and appreciation of one’s team members. Hargadon and Bechky (2006)
found that creative teams shape their ideas through an evolving cycle of
asking for help, providing help, and engaging in collective reflection,
whereby members experience a sense of gratefulness for each other’s
efforts and contributions.
This study aims to gain a deeper, richer, and more nuanced un-
derstanding of team creativity by examining the effect of a specific form
of positive emotion—gratitude—on team creativity by delineating its
impact on collective information processing. Gratitude is defined as a
positive emotion that stems from valuing and being aware of one’s
surroundings, such as the presence of helpful others (McCullough,
Kilpatrick, Emmons, & Larson, 2001); gratifying events (Graham &
Barker, 1990); and even chance (Wood, Froh, & Geraghty, 2010). Of the
multiple specific types of positive emotion (e.g., joy, serenity, awe,
hope, pride; Fredrickson, 2013), we chose gratitude to examine team
creativity because it is unique, due to its tendencies to find and re-
ciprocate others’ contributions (Algoe, 2012; Fredrickson, 2013).
Therefore, while positive emotion in general encourages team members
to exhibit upbeat attitudes (George, 1990; Lyubomirsky, King, &
Diener, 2005), gratitude triggers team members to reframe an experi-
ence, by which they become aware of their teammates’ contributions. In
turn, this can motivate them to think deeply about novel and useful
ways to reciprocate and benefit others (e.g., DeSteno, Bartlett,
Baumann, Williams, & Dickens, 2010; Fredrickson, 2004; Grant & Gino,
2010; McCullough et al., 2001).
By focusing on a specific positive emotion (i.e., gratitude), we
provide a much needed and nuanced understanding of what positive
emotions actually do for group creativity. Indeed, the effects of positive
emotions on group dynamics and information processing are largely
paradoxical. Positive emotion facilitates and solidifies social bonds
among members—but it may also discourage the rigorous processing of
information (George & King, 2007; van Knippenberg, Kooij-de Bode, &
van Ginkel, 2010). The hazards of groupthink are well known, by which
team members’ optimism and confidence can result in failure to co-
ordinate their collective intelligences (Janis, 1982). Positive emotions
facilitate trust, inclusion, and lenient views of team members’ ideas
https://doi.org/10.1016/j.obhdp.2019.11.005
Received 7 September 2017; Received in revised form 17 August 2019; Accepted 14 November 2019
⁎ Corresponding authors at: Research School of Management, Australian National University, Canberra, ACT 2601, Australia (G. Park). Graduate School of
Innovation and Technology Management, KAIST, Daejeon, South Korea (S. Lee).
E-mail addresses: [email protected] (G. Park), [email protected] (S. Lee).
1 The first two authors contributed equally to this article.
Organizational Behavior and Human Decision Processes 156 (2020) 69–81
0749-5978/ © 2019 Elsevier Inc. All rights reserved.
T
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mailto:[email protected]
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(Forgas & Moylan, 1987). Positive mood could put groups at risk of
engaging in shallow processing and consensus-seeking tendencies
(Forgas, 1992; Schwarz & Clore, 2003). Sunstein and Hastie (2015)
warn against “happy talk,” by which expressions of enthusiasm and
confidence erode the group’s likelihood of thoroughly considering di-
verse perspectives. Gratitude is a deeply social emotion that focuses on
the benefits received from others and motivates individuals to engage in
thoughtful reciprocation (Fredrickson, 2004). Members feeling grateful,
therefore, would be less likely to engage in the typically shallow chatter
of groups that feel highly positive. Instead, an individual member’s
ideas would be received and reciprocated with careful consideration by
fellow members. Gratitude, therefore, provides a fertile environment
for diverse ideas to be expressed, considered, and integrated during
group discussion.
Using a controlled laboratory study that randomly assigned parti-
cipants to groups and manipulated three affective states—gratitude vs.
neutral (Study 1) and gratitude vs. positive (Study 2)—we shed light on
how experiencing gratitude influences the quality of team information
processing and team creativity. Specifically, this study makes three
unique contributions. First, by decomposing positive emotion as a
specific positive emotion—gratitude—and examining its role, this study
clarifies the creativity-boosting effect of positive emotion on teams and
affords more precise prediction of team creativity. Second, using a
group information processing approach, this study unpacks the “black
box” of positive emotions and team creativity. That is, we examine the
extent to which groups engage in shallow, consensus-seeking processing
or careful, deliberative processing of ideas during discussion. Finally,
while the benefits of gratitude have been widely discussed as an ante-
cedent of individual-level well-being or satisfaction in close relation-
ships (e.g., Emmons & McCullough, 2003; Froh, Sefick, & Emmons,
2008; Tsang, 2006), its impact on group-level performance has been
little investigated in organizational science. Our research, which ex-
amines gratitude’s impact on team information processing and team
creativity, offers a precise and powerful tool for predicting and facil-
itating team performance in organizations.
2. Theory and hypotheses
2.1. Definition of gratitude
Gratitude, which is a specific positive emotion that stems from va-
luing and being aware of one’s surroundings or events (Graham &
Barker, 1990; McCullough et al., 2001; Wood et al., 2010), is a benefit-
related experience that arises when an individual appraises a positive
outcome as having been caused by external influence (Tugade, Shiota,
& Kirby, 2014). Gratitude is often described as a high-level positive
emotion, attitude, or experience initiated by a cognitive process such as
pride, interest, or contentment (Fredrickson, 2004). While gratitude has
positive emotional valence (Lazarus & Lazarus, 1994; Mayer, Salovey,
Gomberg-Kaufman, & Blainey, 1991; Ortony, Clore, & Collins, 1988), it
differs from happiness and other positive emotions because it is linked
with the external attribution of positive feeling (Weiner, 1986) and
stimulates actions to promote positive outcomes for others, including
but not limited to the original benefactor (Fredrickson, 2004; Weiner,
Russell, & Lerman, 1979). Gratitude is related to, but distinct from,
optimism and hope; optimism is the expectation of good future out-
comes (Emmons & McCullough, 2003), and hope is the pathway for
attaining those outcomes (Geraghty, Wood, & Hyland, 2010).
Gratitude carries unique implications for human sociality (Roberts,
2004). It distinctively produces constructive, meaningful interpersonal
engagements and motivates generous actions that benefit others
(McCullough et al., 2001). Other positive emotions, in contrast, are
vague in their social implications. For example, pride is linked to an
urge to share news of individual achievement and visions of greater
future success; joy is linked to an urge to play and push physical limits;
and interest is linked to an urge to explore, have new experiences, and
gather information (Fredrickson, 2004). Bonnie and de Waal (2004)
argue that a feeling of gratitude has evolved by allowing humans to
engage in reciprocal exchanges of resources, which reinforces a cascade
of beneficial actions as the result of more effective collective actions.
Unlike perspective taking, which involves a cognitive effort to under-
stand another’s perspective (Hoever, van Knippenberg, van Ginkel, &
Barkema, 2012), feeling grateful involves finding or being reminded of
positivity and the benefits associated with the person (Algoe, 2012).
Gratitude is also distinct from indebtedness and obligation, which stem
from negative or uncomfortable encounters; gratitude, in contrast,
arises from contentment or positive experiences (McCullough et al.,
2001). Feelings of gratitude can be induced by practicing gratitude—for
instance, by writing in a journal about the generosity and benefits one
has experienced (e.g., Ban Breathnach, 1996; Emmons & McCullough,
2003; Hay & Friends, 1996).
2.2. Gratitude as a team-level emotion
Because this is the first study to examine gratitude in a team con-
text, we use an inclusive definition of team gratitude: the average of
group members’ feelings of gratitude, by which we assume that the
team boundary contains a meaningful implication on the level of gra-
titude its members experience during teamwork. An extensive literature
examines how affective experiences can be treated as group property by
considering how group members share and regulate their feelings while
working together. Specifically, studies suggest that group emotions are
formulated through social interaction in both top-down and bottom-up
processes (Barsade & Knight, 2015; Bartel & Saavedra, 2000; George,
1990).
A top-down perspective explains the mechanism by which group
characteristics and shared events shape members’ feelings in the group
(Barsade & Gibson, 1998; Barsade & Knight, 2015). Groups offer ample
opportunities to experience events that can spur feelings of gratitude
(Fehr, Fulmer, Awtrey, & Miller, 2017). Some groups may have a gra-
titude-enhancing norm and culture (Fehr, Fulmer, Awtrey, & Miller,
2017). For instance, a group might have a ritual in which all members
are expected to express and reciprocate their appreciation of one an-
other while celebrating the end of a project. Group leaders can also
promote the importance of recognizing contributions made during a
project, which would enhance the gratitude felt by group members.
The bottom-up mechanism causes an individual member’s emo-
tional state to cascade upward to the group’s overall collective emotion
(Barsade, 2002; Kelly & Barsade, 2001; Totterdell, 2000). An individual
member’s feelings are transmitted through emotional contagion, vi-
carious effects, and interaction synchrony. The individual functions as
an emotional spark for his/her teammates, by which an initial emo-
tional expression spirals through the group and induces an affective
experience across group members. In particular, grateful people, feeling
approved and cared by benefactors, tend to see others as potential
benefactors for them and bind with others for the welfare and re-
ciprocation of one another. Thus, boundaries of benefactors are ex-
tended beyond a particular benefactor to collective level (Algoe &
Haidt, 2009; Algoe, 2012; Algoe, Haidt, & Gable, 2008). In this way,
individual members’ feeling of gratitude may trigger a group-level
gratitude in a team. For instance, a member can express his/her grati-
tude for a teammate in a range of ways, from a gesture or tone of voice
to a card or a gift. The grateful person’s emotions are expressed such
that the target person and other teammates experience a vicarious
feeling of gratefulness—in this case, for the teammate’s gratitude for
them. That is, grateful people are responsive to others’ needs, benefiting
and providing utility for others and groups in which they are em-
bedded. This feeling of mutual gratefulness would further escalate into
a team-level state of thankfulness.
N. Pillay, et al. Organizational Behavior and Human Decision Processes 156 (2020) 69–81
70
2.3. The collective information-processing perspective on team creativity
The collective information-processing perspective on team crea-
tivity highlights a team’s quality of information processing as a key
antecedent for the production of creative ideas (De Dreu, Nijstad, & van
Knippenberg, 2008; De Dreu, Baas, & Nijstad, 2008; Hinsz, Tindale, &
Vollrath, 1997). Teams that engage in information elaboration, which is
defined as actively deliberating on and systematically integrating team
members’ ideas (Hoever et al., 2012; Paulus & Brown, 2007), are more
likely to come up with creative solutions. Teams working on a creative
task begin their idea deliberation process with members expressing
undeveloped ideas and opinions. These initial ideas function as raw
ingredients that can be further processed by teammates. Information
elaboration transforms team members’ initially unconnected ideas into
well-integrated, coherent sets of ideas of higher creative quality. In a
team, one’s ideas are expressed and then acknowledged, endorsed,
evaluated, and/or modified with the help of teammates during discus-
sion. Team discussion that involves minimal information elabor-
ation—that is, when team members merely focus on expressing and
reinforcing their own ideas—gains little from the intersection of dif-
ferent ideas. Team output, in this case, will merely be an assortment of
unconnected ideas, with little advancement of their creative qualities.
In contrast, team discussion can include extensive information ela-
boration, whereby team members engage in a synergetic discussion of
different ideas and advance those ideas with greater creativity
(Kurtzberg & Amabile, 2001; Resick, Murase, Randall, & DeChurch,
2014).
Hypothesis 1: Team information elaboration will promote team crea-
tivity.
2.4. Gratitude, information elaboration, and team creativity
In this section, we propose that teams with high gratitude would
deeply and systematically process and respond to others’ ideas and put
more effort into integrating team members’ ideas during team discus-
sions. Gratitude entails recognizing others’ contributions and giving
others credit (Algoe, 2012). Teams with high gratitude are more likely
to be other-focused (DeSteno et al., 2010), by which they would attend
to teammates’ ideas and suggestions with a positive and sincere attitude
that encourages active listening and constructive conversation.
Awareness of external contributions inspires grateful individuals to see
the merits and benefits of conversing with teammates. By being more
attentive and responsive to team members’ comments and suggestions,
the whole team becomes involved in idea elaboration, which further
improves and integrates their ideas (Paulus & Brown, 2007). In his
essay on moral sentiments, Smith (1982) argues that gratitude helps
society develop a balanced understanding of issues that are highly di-
visive, such as theology, because it allows constituencies to remain
respectful toward those with different perspectives and recognize the
interdependencies that bring diverse ideas together. In contrast, when
team members are feeling ungrateful, they would be less motivated to
reciprocate their teammates’ contributions and efforts. Instead of col-
lectively building creative ideas, members in ungrateful teams would be
more likely to focus on expressing and reinforcing their own ideas
throughout the discussion.
Moreover, behaviors driven by gratitude are uniquely reciprocal
and thoughtful in nature (Tsang, 2006) and accompanied by a strong
focus on benefiting others and collectives (DeSteno et al., 2010).
Fredrickson (2004) argues that grateful individuals are creative, be-
cause they formulate actions that benefit others and their focus is not
limited to the original benefactor. Also, gratitude does not foster a
simple, mindless tit-for-tat or reciprocation for the exact benefit. In-
stead, gratitude motivates individuals to remain generous and creative
in their formulation of reciprocal actions and engage in mutually ben-
eficial collaborations. Therefore, in grateful teams, initial ideas shared
by team members would be more likely to trigger a response gesture by
which the team works collectively to improve on the ideas.
The more effort teams with higher gratitude put into thinking and
systematically integrating others’ ideas, the more likely that these ideas
will become intriguing or novel—and would otherwise have been
harder to generate (Stasser & Titus, 1987). Team members who feel
grateful should be motivated to think deeply and thoroughly about how
to reciprocate the benefits they have received from others and, in turn,
engage in more information elaboration during team discussion,
thereby supporting and building on others’ ideas (e.g., Bonnie & de
Waal, 2004; DeSteno et al., 2010; Tsang, 2006). Active intellectual
exchanges among team members would increase the cross-fertilization
of ideas, which in turn enables teams to develop novel ideas (Kurtzberg
& Amabile, 2001; Nemeth, 1986). In sum, teams that feel grateful
would integrate and elaborate on others’ ideas more during team dis-
cussions, which in turn enhances team creativity (Bechtoldt, De Dreu,
Nijstad, & Choi, 2010; Hoever et al., 2012).
Hypothesis 2: A feeling of gratitude will facilitate information ela-
boration in teams.
Hypothesis 3: Information elaboration will mediate the effects of a
feeling of gratitude on team creativity.
2.5. Differential effects of gratitude vs. positive emotion
Despite the prevalence and significance of positive emotion for
teams, the literature has largely been divided: Positive emotions boost
collective morale, yet they can weaken the epistemic rigor of teams,
which is essential for team creativity (George & King, 2007; Jones &
Kelly, 2009; Sunstein & Hastie, 2015). We propose that a feeling of
positive emotions in general and of gratitude in particular trigger dif-
ferent interpersonal and social dynamics during group discussion,
which in turn dampen or contribute to team creativity.
Specifically, we expect that compared to teams that feel positive
emotion, teams feeling grateful would be more likely to engage in
careful information processing. Without feeling grateful, other positive
emotion would prompt teams to engage in superficial chatter, in which
members focus on demonstrating excitement about and enthusiasm for
ideas during discussion. Positive emotion signals success and solidifies
social bonds, by which teams feel an enhanced sense of unity and
confidence (e.g., Keltner & Haidt, 1999). When simply feeling positive,
teams would feel optimistic regarding their chances of success and
members would share more lenient evaluations of ideas suggested by
others (e.g., Bohner, Crow, Erb, & Schwarz, 1992; Isen & Means, 1983).
Under the influence of positive emotion, ideas would be shared with a
high level of enthusiasm and conviction, which triggers immediate
agreement with and acceptance of teammates’ ideas.
In support of our prediction, studies have shown that when speakers
exhibit a highly energetic, enthusiastic attitude, their ideas are per-
ceived as creative and convincing (Elsbach & Kramer, 2003; Goncalo,
Flynn, & Kim, 2010). When feeling positive, team members would ex-
hibit greater fervor and confidence regarding their ideas, and be more
likely to accept teammates’ ideas. Therefore, teams in the positive
emotion condition, compared to teams in the gratitude condition,
would be more likely to lose their opportunity to integrate and advance
their ideas. Instead, their ideas would remain largely unconnected in
the midst of a greater quantity.
On the other hand, gratitude is associated with distinct re-
ciprocating, binding behavioral tendencies that would reinforce highly
engaging discourse on others’ ideas and have an enduring positive
impact on the quality of group discussion. Gratitude would be more
likely to create chains of events that carry positive meaning for team
members, which fosters the successful integration of different ideas
during team discussion (Algoe & Haidt, 2009; Algoe et al., 2008; Algoe,
2012). Gratitude would function as a powerful reinforcement that
prompts individual to reciprocate others’ generosity (which is not
N. Pillay, et al. Organizational Behavior and Human Decision Processes 156 (2020) 69–81
71
necessarily related to other kinds of positive affect), and should thus
lead to more constructive responses to and elaboration on others’ ideas.
This, in turn should induce helpful suggestions and comments about
team members’ ideas. When a team member feels grateful, they would
not present their ideas with great ardor, which prompts the immediate
acceptance of their ideas. Rather, grateful team members would focus
on building on each other’s ideas collectively and reflecting on their
team members’ suggestions and comments.
Hypothesis 4: A feeling of gratitude (vs. positive emotion) will decrease
team members’ engagement in shallow information processing, such that
grateful (vs. positive) members will show less enthusiasm for and con-
fidence in their ideas (Hypothesis 4a) and are less likely to immediately
accept teammates’ ideas (Hypothesis 4b).
Furthermore, we predict that due to the negative impact of gratitude
on shallow information processing, gratitude will decrease the number
of ideas generated by teams. Teams that feel positive emotion in general
are expected to engage in superficial information processing, during
which they produce ideas that are large in quantity but lacking in
quality. Specifically, in the absence of gratitude, teams in the positive
emotion condition would spend more time complimenting each other
and praising themselves for how valuable they and their ideas are. On
these occasions, letting teams indulge in exuberant feelings would
allow them to run wild with their positive spirits and express as many
ideas as possible. In such teams, the initial ideas shared by team
members would remain a mere list—unevaluated, unelaborated on, and
unconnected. In contrast, because grateful (vs. positive) teams would
engage in less superficial and more deliberate information processing,
the overall quantity of ideas that teams generate would be lower.
Thanking each other for their contributions and elaborating on each
other’s ideas would take time, and thus hamper the generation of a
large number of ideas.
Hypothesis 5: A feeling of gratitude (vs. positive emotion) will decrease
the number of ideas teams generate via its impact on shallow information
processing.
2.6. Overview of the studies
We tested our proposed relationship—that gratitude leads to in-
formation elaboration and then team creativity—in two lab experi-
ments. Specifically, we manipulated a feeling of gratitude to examine
the causal mechanism involved in team creativity. Furthermore, by
manipulating gratitude, we sought to determine whether organizations
could use it as a practical tool to enhance team creativity. Study 1
compared teams in a gratitude condition with those in a neutral con-
dition to determine whether gratitude increases team information
processing and team creativity from the baseline (Hypotheses 1–3). In
particular, Study 1 adopted the top-down perspective of group emotion
by letting participants work on a team task and then assigning them to
the condition of feeling gratitude or not. Study 2 further demonstrated
the differential effects of gratitude compared to positive emotion in
general on team information processing and the quantity and creative
quality of team ideas (Hypotheses 4–5). Here we adopted the bottom-up
perspective of group emotion: participants individually responded to
our gratitude manipulation without a preceding group task. Prior to
conducting the study, following Cohen (1992) power analysis with
power = 0.80 and a large effect size (d > 0.50) assumption, we tar-
geted a sample size of 30 groups for each condition, similar to related
studies by Hoever et al. (2012) and Park and DeShon (2018).
3. Study 1
3.1. Participants
Two hundred and twelve undergraduate students (60 teams) were
recruited from psychology classes at a large public university in
Singapore and received extra credit. Of the participants, 70\% were fe-
male and 88.3\% Chinese; mean age was 21.04 (SD = 1.59).
3.2. Procedure and experimental manipulation
Groups of 6–8 individuals were directed to arrive at our laboratory
at a given time. On arrival, each group was randomly divided into two
teams of 3–4 members each and seated in separate rooms. Participants
were then told that they were going to work on three different tasks
(i.e., arithmetic, writing, and creativity tasks) as a team and given 3 min
to introduce themselves and come up with a team name.
For the first task, teams worked on a collective task in which they
collaborated to solve puzzles. Specifically, each team member was
given a Sudoku puzzle of medium difficulty on a sheet of paper.
Participants were then told that they were going to solve the puzzles
together by passing the puzzle they were working on to the team
member on their right every 90 s. After being informed that the top
10\% of individuals with the most correct solutions would win $10, they
had 90s to complete as much as possible of the first puzzle they were
given. At the end of this interval, team members passed their puzzles to
the right and, in turn, began working on the puzzle given to them by the
team member on their left. This was repeated until everyone had
worked on each puzzle once.
After this, participants were told that they were going to work on a
writing task for 5 min. We adopted a manipulation that has been widely
used in previous research on gratitude (Emmons & McCullough, 2003;
Froh et al., 2008; Lyubomirsky, Sheldon, & Schkade, 2005; Watkins,
Grimm, & Kolts, 2004). As this study aims to motivate participants to
feel grateful by recalling instances in which they were grateful to their
teammates, we asked participants to write about their teamwork ex-
periences for five min. Half of the participants were randomly assigned
to the gratitude condition (n = 106; 30 teams) and given the following
to read:
There are many things in our lives, both large and small, that we might be
grateful about. For the next 5 min, think back and write in detail about
why you are grateful or thankful for your team members. These team
members include the people you just worked with and past team mem-
bers. Please elaborate on why you feel grateful or thankful and provide
contextual information where necessary.
The other half of the participants were randomly assigned to the
neutral condition (n = 106; 30 teams) and asked to write in detail about
their activities on a typical day and given the following to read:
For the next 5 min, write about your typical day starting with the first
thing you do in the morning. Please only write about the objective actions
that you …
DOI: 10.1126/science.1193147
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task (correct, error, inserted error, and corrected
error) to allow typists to distinguish sources of errors
and correct responses and, therefore, provide a
stronger test of illusions of authorship. We asked 24
skilled typists (WPM = 70.7 T 16.4) to type 600
words, each of which was followed by a four-
alternative explicit report screen. Typists typed
91.8\% of the words correctly. Mean interkeystroke
intervals, plotted in Fig. 3A, show post-error slow-
ing for incorrect responses (F1,138 = 117.7, p < 0.01)
and corrected errors (F1,138 = 120.0, p < 0.01), but
not for inserted errors (F < 1.0), indicating that
inner-loop detection distinguishes between actual
errors and correct responses.
Explicit detection probabilities, plotted in Fig.
3B, show good discrimination between correct
and error responses. For correct responses, typists
said “correct” more than “error” [t(23) = 97.29,
p < 0.01]; for error responses, typists said “error”
more than “correct” [t(23) = 8.22, p < 0.01]. Typ-
ists distinguished actual errors from inserted errors
well, avoiding an illusion of authorship. They
said “error” more than “inserted” for actual errors
[t(23) = 7.06, p < 0.01] and “inserted” more than
“error” for inserted errors [t(23) = 14.75, p <
0.01]. However, typists showed a strong illusion
of authorship with corrected errors. They were
just as likely to call them correct responses as
corrected errors [t(23) = 1.38].
The post-error slowing and post-trial report
data show a dissociation between inner- and outer-
loop error detection. We assessed the dissociation
further by comparing post-error slowing on trials
in which typists did and did not experience
illusions of authorship (21). The pattern of post-
error slowing was the same for both sets of trials
(fig. S6), suggesting that the pattern in Fig. 3A is
representative of all trials.
The three experiments found strong dissocia-
tions between explicit error reports and post-error
slowing. These dissociations are consistent with
the hierarchical error-detection mechanism that we
proposed, with an outer loop that mediates ex-
plicit reports and an inner loop that mediates post-
error slowing. This nested-loop description of error
detection is consistent with hierarchical models
of cognitive control in typewriting (9, 10, 15–17)
and with models of hierarchical control in other
complex tasks (2, 8, 22). Speaking, playing music,
and navigating through space may all involve
inner loops that take care of the details of per-
formance (e.g., uttering phonemes, playing notes,
and walking) and outer loops that ensure that in-
tentions are fulfilled (e.g., messages communi-
cated, songs performed, and destinations reached).
Hierarchical control may be prevalent in highly
skilled performers who have had enough practice
to develop an autonomous inner loop. Previous
studies of error detection in simple tasks may
describe inner-loop processing. The novel con-
tribution of our research is to dissociate the outer
loop from the inner loop.
The three experiments demonstrate cogni-
tive illusions of authorship in skilled typewriting
(11–14). Typists readily take credit for correct
output on the screen, interpreting corrected errors
as their own correct responses. They take the
blame for inserted errors, as in the first and sec-
ond experiments, but they also blame the com-
puter, as in the third experiment. These illusions
are consistent with the hierarchical model of error
detection, with the outer loop assigning credit
and blame and the inner loop doing the work of
typing (10, 17). Thus, illusions of authorship
may be a hallmark of hierarchical control systems
(2, 11, 22, 23).
References and Notes
1. P. M. A. Rabbitt, J. Exp. Psychol. 71, 264 (1966).
2. D. A. Norman, Psychol. Rev. 88, 1 (1981).
3. C. B. Holroyd, M. G. H. Coles, Psychol. Rev. 109, 679 (2002).
4. N. Yeung, M. M. Botvinick, J. D. Cohen, Psychol. Rev.
111, 931 (2004).
5. W. J. Gehring, B. Goss, M. G. H. Coles, D. E. Meyer,
E. Donchin, Psychol. Sci. 4, 385 (1993).
6. S. Dehaene, M. I. Posner, D. M. Tucker, Psychol. Sci. 5,
303 (1994).
7. C. S. Carter et al., Science 280, 747 (1998).
8. K. S. Lashley, in Cerebral Mechanisms in Behavior,
L. A. Jeffress, Ed. (Wiley, New York, 1951), pp. 112–136.
9. T. A. Salthouse, Psychol. Bull. 99, 303 (1986).
10. G. D. Logan, M. J. C. Crump, Psychol. Sci. 20, 1296
(2009).
11. T. I. Nielsen, Scand. J. Psychol. 4, 225 (1963).
12. M. M. Botvinick, J. D. Cohen, Nature 391, 756 (1998).
13. D. M. Wegner, The Illusion of Conscious Will (MIT Press,
Cambridge, MA, 2002).
14. G. Knoblich, T. T. J. Kircher, J. Exp. Psychol. Hum.
Percept. Perform. 30, 657 (2004).
15. D. E. Rumelhart, D. A. Norman, Cogn. Sci. 6, 1 (1982).
16. L. H. Shaffer, Psychol. Rev. 83, 375 (1976).
17. X. Liu, M. J. C. Crump, G. D. Logan, Mem. Cognit. 38,
474 (2010).
18. A. M. Gordon, J. F. Soechting, Exp. Brain Res. 107,
281 (1995).
19. J. Long, Ergonomics 19, 93 (1976).
20. P. Rabbitt, Ergonomics 21, 945 (1978).
21. Materials and methods are available as supporting
material on Science Online.
22. M. M. Botvinick, Trends Cogn. Sci. 12, 201 (2008).
23. R. Cooper, T. Shallice, Cogn. Neuropsychol. 17, 297 (2000).
24. We thank J. D. Schall for comments on the manuscript.
This research was supported by grants BCS 0646588
and BCS 0957074 from the NSF.
Supporting Online Material
www.sciencemag.org/cgi/content/full/330/6004/683/DC1
Materials and Methods
SOM Text
Figs. S1 to S6
References
5 April 2010; accepted 13 September 2010
10.1126/science.1190483
Evidence for a Collective Intelligence
Factor in the Performance of
Human Groups
Anita Williams Woolley,1* Christopher F. Chabris,2,3 Alex Pentland,3,4
Nada Hashmi,3,5 Thomas W. Malone3,5
Psychologists have repeatedly shown that a single statistical factor—often called “general
intelligence”—emerges from the correlations among people’s performance on a wide variety of cognitive
tasks. But no one has systematically examined whether a similar kind of “collective intelligence” exists for
groups of people. In two studies with 699 people, working in groups of two to five, we find converging
evidence of a general collective intelligence factor that explains a group’s performance on a wide variety
of tasks. This “c factor” is not strongly correlated with the average or maximum individual intelligence
of group members but is correlated with the average social sensitivity of group members, the equality in
distribution of conversational turn-taking, and the proportion of females in the group.
A
s research, management, and many other
kinds of tasks are increasingly accom-
plished by groups—working both face-
to-face and virtually (1–3)—it is becoming ever
more important to understand the determinants of
group performance. Over the past century,
psychologists made considerable progress in
defining and systematically measuring intelli-
gence in individuals (4). We have used the sta-
tistical approach they developed for individual
intelligence to systematically measure the intelli-
gence of groups. Even though social psycholo-
gists and others have studied for decades how
well groups perform specific tasks (5, 6), they have
not attempted to measure group intelligence in the
same way individual intelligence is measured—
by assessing how well a single group can perform
a wide range of different tasks and using that
information to predict how that same group will
perform other tasks in the future. The goal of the
research reported here was to test the hypothesis
that groups, like individuals, do have character-
istic levels of intelligence, which can be measured
and used to predict the groups’ performance on a
wide variety of tasks.
Although controversy has surrounded it, the
concept of measurable human intelligence is based
on a fact that is still as remarkable as it was to
Spearman when he first documented it in 1904
1Carnegie Mellon University, Tepper School of Business, Pitts-
burgh, PA 15213, USA. 2Union College, Schenectady, NY
12308, USA. 3Massachusetts Institute of Technology (MIT)
Center for Collective Intelligence, Cambridge, MA 02142, USA.
4MIT Media Lab, Cambridge, MA 02139, USA. 5MIT Sloan School
of Management, Cambridge, MA 02142, USA.
*To whom correspondence should be addressed. E-mail:
[email protected]
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(7): People who do well on one mental task tend to
do well on most others, despite large variations in
the tests’ contents and methods of administration
(4). In principle, performance on cognitive tasks
could be largely uncorrelated, as one might expect
if each relied on a specific set of capacities that
was not used by other tasks (8). It could even be
negatively correlated, if practicing to improve one
task caused neglect of others (9). The empirical
fact of general cognitive ability as first demon-
strated by Spearman is now, arguably, the most
replicated result in all of psychology (4).
Evidence of general intelligence comes from
the observation that the average correlation among
individuals’ performance scores on a relatively
diverse set of cognitive tasks is positive, the first
factor extracted in a factor analysis of these scores
generally accounts for 30 to 50\% of the variance,
and subsequent factors extracted account for
substantially less variance. This first factor extracted
in an analysis of individual intelligence tests is
referred to as general cognitive ability, or g, and it
is the main factor that intelligence tests measure.
What makes intelligence tests of substantial prac-
tical (not just theoretical) importance is that in-
telligence can be measured in an hour or less,
and is a reliable predictor of a very wide range
of important life outcomes over a long span of
time, including grades in school, success in many
occupations, and even life expectancy (4).
By analogy with individual intelligence, we
define a group’s collective intelligence (c) as the
general ability of the group to perform a wide
variety of tasks. Empirically, collective intelligence
is the inference one draws when the ability of a
group to perform one task is correlated with that
group’s ability to perform a wide range of other
tasks. This kind of collective intelligence is a prop-
erty of the group itself, not just the individuals in it.
Unlike previous work that examined the effect on
group performance of the average intelligence of
individual group members (10), one of our goals is
to determine whether the collective intelligence of
the group as a whole has predictive power above
and beyond what can be explained by knowing
the abilities of the individual group members.
The first question we examined was whether
collective intelligence—in this sense—even exists.
Is there a single factor for groups, a c factor, that
functions in the same way for groups as general
intelligence does for individuals? Or does group
performance, instead, have some other correla-
tional structure, such as several equally important
but independent factors, as is typically found in
research on individual personality (11)?
To answer this question, we randomly as-
signed individuals to groups and asked them to
perform a variety of different tasks (12). In Study
1, 40 three-person groups worked together for up
to 5 hours on a diverse set of simple group tasks
plus a more complex criterion task. To guide our
task sampling, we drew tasks from all quadrants
of the McGrath Task Circumplex (6, 12), a well-
established taxonomy of group tasks based on the
coordination processes they require. Tasks in-
cluded solving visual puzzles, brainstorming,
making collective moral judgments, and negoti-
ating over limited resources. At the beginning of
each session, we measured team members’ indi-
vidual intelligence. And, as a criterion task at the
end of each session, each group played checkers
against a standardized computer opponent.
The results support the hypothesis that a
general collective intelligence factor (c) exists in
groups. First, the average inter-item correlation
for group scores on different tasks is positive (r =
0.28) (Table 1). Next, factor analysis of team
scores yielded one factor with an initial eigen-
value accounting for more than 43\% of the
variance (in the middle of the 30 to 50\% range
typical in individual intelligence tests), whereas
the next factor accounted for only 18\%. Confir-
matory factor analysis supported the fit of a
single latent factor model with the data [c2 =
1.66, P = 0.89, df = 5; comparative fit index
(CFI) =.99, root mean square error of approxi-
mation (RMSEA) = 0.01]. Furthermore, when
the factor loadings for different tasks on the first
general factor are used to calculate a c score for
each group, this score strongly predicts perform-
ance on the criterion task (r = 0.52, P = 0.01).
Finally, the average and maximum intelligence
scores of individual group members are not
significantly correlated with c [r = 0.19, not
significant (ns); r = 0.27, ns, respectively] and
not predictive of criterion task performance (r =
0.18, ns; r = 0.13, ns, respectively). In a regres-
sion using both individual intelligence and c to
predict performance on the criterion task, c has
a significant effect (b = 0.51, P = 0.001), but
average individual intelligence (b = 0.08, ns) and
maximum individual intelligence (b =.01, ns) do
not (Fig. 1).
In Study 2, we used 152 groups ranging from
two to five members. Our goal was to replicate
these findings in groups of different sizes, using a
broader sample of tasks and an alternative mea-
sure of individual intelligence. As expected, this
study replicated the findings of Study 1, yielding
a first factor explaining 44\% of the variance and a
second factor explaining only 20\%. In addition, a
confirmatory factor analysis suggests an excel-
lent fit of the single-factor model with the data
(c2 = 5.85, P = 0.32, df = 5; CFI = 0.98, NFI =
0.89, RMSEA = 0.03).
In addition, for a subset of the groups in Study
2, we included five additional tasks, for a total of
ten. The results from analyses incorporating all
ten tasks were also consistent with the hypothesis
that a general c factor exists (see Fig. 2). The
scree test (13) clearly suggests that a one-factor
model is the best fit for the data from both studies
[Akaike Information Criterion (AIC) = 0.00 for
single-factor solution]. Furthermore, parallel anal-
ysis (13) suggests that only factors with an eigen-
value above 1.38 should be retained, and there is
only one such factor in each sample. These conclu-
sions are supported by examining the eigenvalues
both before and after principal axis extraction,
which yields a first factor explaining 31\% of
Table 1. Correlations among group tasks and descriptive statistics for Study 1. n = 40 groups; *P ≤
0.05; **P ≤ 0.001.
1 2 3 4 5 6 7 8 9
1 Collective intelligence (c)
2 Brainstorming 0.38*
3 Group matrix reasoning 0.86** 0.30*
4 Group moral reasoning 0.42* 0.12 0.27
5 Plan shopping trip 0.66** 0.21 0.38* 0.18
6 Group typing 0.80** 0.13 0.50** 0.25* 0.43*
7 Avg member intelligence 0.19 0.11 0.19 0.12 –0.06 0.22
8 Max member intelligence 0.27 0.09 0.33* 0.05 –0.04 0.28 0.73**
9 Video game 0.52* 0.17 0.38* 0.37* 0.39* 0.44* 0.18 0.13
Minimum –2.67 9 2 32 –10.80 148 4.00 8.00 26
Maximum 1.56 55 17 81 82.40 1169 12.67 15.67 96
Mean 0 28.33 11.05 57.35 46.92 596.13 8.92 11.67 61.80
SD 1.00 11.36 3.02 10.96 19.64 263.74 1.82 1.69 17.56
Fig. 1. Standardized regression coefficients for
collective intelligence (c) and average individual
member intelligence when both are regressed to-
gether on criterion task performance in Studies
1 and 2 (controlling for group size in Study 2).
Coefficient for maximum member intelligence is
also shown for comparison, calculated in a separate
regression because it is too highly correlated with
individual member intelligence to incorporate both
in a single analysis (r = 0.73 and 0.62 in Studies
1 and 2, respectively). Error bars, mean T SE.
www.sciencemag.org SCIENCE VOL 330 29 OCTOBER 2010 687
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the variance in Study 1 and 35\% of the variance
in Study 2. Multiple-group confirmatory factor
analysis suggests that the factor structures of
the two studies are invariant (c2 = 11.34, P =
0.66, df = 14; CFI = 0.99, RMSEA = 0.01).
Taken together, these results provide strong
support for the existence of a single dominant
c factor underlying group performance.
The criterion task used in Study 2 was an ar-
chitectural design task modeled after a complex
research and development problem (14). We had
a sample of 63 individuals complete this task
working alone, and under these circumstances,
individual intelligence was a significant predictor
of performance on the task (r = 0.33, P = 0.009).
When the same task was done by groups,
however, the average individual intelligence of
the group members was not a significant predictor
of group performance (r = 0.18, ns). When both
individual intelligence and c are used to predict
group performance, c is a significant predictor (b =
0.36, P = 0.0001), but average group member
intelligence (b = 0.05, ns) and maximum member
intelligence (b = 0.12, ns) are not (Fig. 1).
If c exists, what causes it? Combining the find-
ings of the two studies, the average intelligence of
individual group members was moderately cor-
related with c (r = 0.15, P = 0.04), and so was the
intelligence of the highest-scoring team member
(r = 0.19, P = 0.008). However, for both studies, c
was still a much better predictor of group per-
formance on the criterion tasks than the average or
maximum individual intelligence (Fig. 1).
We also examined a number of group and indi-
vidual factors that might be good predictors of c. We
found that many of the factors one might have ex-
pected to predict group performance—such as group
cohesion, motivation, and satisfaction—did not.
However, three factors were significantly cor-
related with c. First, there was a significant corre-
lation between c and the average social sensitivity
of group members, as measured by the “Reading
the Mind in the Eyes” test (15) (r = 0.26, P =
0.002). Second, c was negatively correlated with
the variance in the number of speaking turns by
group members, as measured by the sociometric
badges worn by a subset of the groups (16) (r =
–0.41, P = 0.01). In other words, groups where a
few people dominated the conversation were less
collectively intelligent than those with a more
equal distribution of conversational turn-taking.
Finally, c was positively and significantly
correlated with the proportion of females in the
group (r = 0.23, P = 0.007). However, this result
appears to be largely mediated by social sensitiv-
ity (Sobel z = 1.93, P = 0.03), because (consistent
with previous research) women in our sample
scored better on the social sensitivity measure
than men [t(441) = 3.42, P = 0.001]. In a regres-
sion analysis with the groups for which all three
variables (social sensitivity, speaking turn vari-
ance, and percent female) were available, all had
similar predictive power for c, although only
social sensitivity reached statistical significance
(b = 0.33, P = 0.05) (12).
These results provide substantial evidence for
the existence of c in groups, analogous to a well-
known similar ability in individuals. Notably, this
collective intelligence factor appears to depend
both on the composition of the group (e.g., aver-
agememberintelligence)andonfactorsthatemerge
from the way group members interact when they
are assembled (e.g., their conversational turn-
taking behavior) (17, 18).
These findings raise many additional questions.
For example, could a short collective inteligence
test predict a sales team’s or a top management
team’s long-term effectiveness? More important-
ly, it would seem to be much easier to raise the
intelligence of a group than an individual. Could
a group’s collective intelligence be increased by,
for example, better electronic collaboration tools?
Many previous studies have addressed ques-
tions like these for specific tasks, but by measur-
ing the effects of specific interventions on a group’s
c, one can predict the effects of those interventions
on a wide range of tasks. Thus, the ability to
measure collective intelligence as a stable property
of groups provides both a substantial economy of
effort and a range of new questions to explore in
building a science of collective performance.
References and Notes
1. S. Wuchty, B. F. Jones, B. Uzzi, Science 316, 1036 (2007).
2. T. Gowers, M. Nielsen, Nature 461, 879 (2009).
3. J. R. Hackman, Leading Teams: Setting the Stage for
Great Performances (Harvard Business School Press,
Boston, 2002).
4. I. J. Deary, Looking Down on Human Intelligence: From
Psychometrics to the Brain (Oxford Univ. Press, New
York, 2000).
5. J. R. Hackman, C. G. Morris, in Small Groups and Social
Interaction, Volume 1, H. H. Blumberg, A. P. Hare,
V. Kent, M. Davies, Eds. (Wiley, Chichester, UK, 1983),
pp. 331–345.
6. J. E. McGrath, Groups: Interaction and Performance
(Prentice-Hall, Englewood Cliffs, NJ, 1984).
7. C. Spearman, Am. J. Psychol. 15, 201 (1904).
8. C. F. Chabris, in Integrating the Mind: Domain General
Versus Domain Specific Processes in Higher Cognition,
M. J. Roberts, Ed. (Psychology Press, Hove, UK, 2007),
pp. 449–491.
9. C. Brand, The g Factor (Wiley, Chichester, UK, 1996).
10. D. J. Devine, J. L. Philips, Small Group Res. 32, 507
(2001).
11. R. R. McCrae, P. T. Costa Jr., J. Pers. Soc. Psychol.
52, 81 (1987).
12. Materials and methods are available as supporting
material on Science Online.
13. R. B. Cattell, Multivariate Behav. Res. 1, 245 (1966).
14. A. W. Woolley, Organ. Sci. 20, 500 (2009).
15. S. Baron-Cohen, S. Wheelwright, J. Hill, Y. Raste, I. Plumb,
J. Child Psychol. Psychiatry 42, 241 (2001).
16. A. Pentland, Honest Signals: How They Shape Our World
(Bradford Books, Cambridge, MA, 2008).
17. L. K. Michaelsen, W. E. Watson, R. H. Black, J. Appl.
Psychol. 74, 834 (1989).
18. R. S. Tindale, J. R. Larson, J. Appl. Psychol. 77, 102
(1992).
19. This work was made possible by financial support from the
National Science Foundation (grant IIS-0963451), the
Army Research Office (grant 56692-MA), the Berkman
Faculty Development Fund at Carnegie Mellon University,
and Cisco Systems, Inc., through their sponsorship of the
MIT Center for Collective Intelligence. We would especially
like to thank S. Kosslyn for his invaluable help in the
initial conceptualization and early stages of this work and
I. Aggarwal and W. Dong for substantial help with data
collection and analysis. We are also grateful for comments
and research assistance from L. Argote, E. Anderson,
J. Chapman, M. Ding, S. Gaikwad, C. Huang, J. Introne,
C. Lee, N. Nath, S. Pandey, N. Peterson, H. Ra, C. Ritter,
F. Sun, E. Sievers, K. Tenabe, and R. Wong. The hardware
and software used in collecting sociometric data are the
subject of an MIT patent application and will be provided for
academic research via a not-for-profit arrangement through
A.P. In addition to the affiliations listed above, T.W.M.
is also a member of the Strategic Advisory Board at
InnoCentive, Inc.; a director of Seriosity, Inc.; and chairman
of Phios Corporation.
Supporting Online Material
www.sciencemag.org/cgi/content/full/science.1193147/DC1
Materials and Methods
Tables S1 to S4
References
2 June 2010; accepted 10 September 2010
Published online 30 September 2010;
10.1126/science.1193147
Include this information when citing this paper.
Fig. 2. Scree plot demonstrating
the first factor from each study ac-
counting for more than twice as
much variance as subsequent fac-
tors. Factor analysis of items from
the Wonderlic Personnel Test of In-
dividual intelligence administered
to 642 individuals is included as a
comparison.
29 OCTOBER 2010 VOL 330 SCIENCE www.sciencemag.org688
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alvaro
Resaltado
INTRODUCTION
FEAR CONSENSUS, LOVE DISSENT
THIS BOOK IS FUNDAMENTALLY ABOUT HOW WE MAKE
DECISIONS and judgments. In particular, it is about the
influence of others on our judgments. People influence us in a
distinctly different manner depending on whether they are a
majority and have consensus or whether they are a minority
voice expressing dissent. We will see in this book that a
consensus position can sway our judgments even when it is in
error, and even when the facts are in front of our face.
The more insidious aspect of consensus is that, whether or
not we come to agree with the majority, it shapes the way we
think. We start to view the world from the majority
perspective. Whether we are seeking and interpreting
information, using a strategy in problem-solving, or finding
solutions, we take the perspective of that majority. We think in
narrow ways—the majority’s ways. On balance, we make
poorer decisions and think less creatively when we adopt the
majority perspective.
Dissent, the minority voice, also influences us. Dissenters,
too, can sway us to their opinion. Theirs is an uphill battle, but
they can get us to agree with them. The “why” and the “how”
of a dissenter’s ability to persuade us are very different from
how a majority persuades us. Persuasion by a dissenter is more
indirect, requires more time, and follows a more subtle
choreography of argument.
Perhaps most importantly, dissent also shapes the way we
think about an issue, the way we arrive at our position or
decision. When we are exposed to dissent, our thinking does
not narrow as it does when we are exposed to consensus. In
fact, dissent broadens our thinking. Relative to what we would
do on our own if we had not been exposed to dissent, we think
in more open ways and in multiple directions. We consider
more information and more options, and we use multiple
strategies in problem-solving. We think more divergently,
more creatively. The implications of dissent are important for
the quality of our decision-making. On balance, consensus
impairs the quality of our decisions while dissent benefits it.
As beneficial as dissent may be, it is not easy for someone
who holds a dissenting viewpoint to express it. When we think
or believe differently from those around us, we are not sure
that we are right. In fact, we are prone to think that “truth lies
in numbers,” and when we find ourselves in a minority we
think we must be wrong. Additionally, we are afraid of the
ridicule or rejection that are likely to come from dissenting.
We hesitate. We put our heads down. We are silent. Not
speaking up, however, has consequences. If the individual
does not speak up, the group suffers and misses opportunities.
Worse, a group compelled to make quick judgments while
operating from only one perspective can make very bad
decisions. Some are fatal.
Three days before Christmas, in 1978, United
Airlines Flight 173 was headed from JFK Airport in
New York to Portland, Oregon, with a scheduled
stop in Denver. It was expected to arrive in
Portland a little after 5:00 p.m. There were 196
people on board. The crew was experienced.
Everything seemed fine. Everything seemed
routine.
As the flight approached Portland, the time
came to lower the landing gear. Suddenly there
was a loud thump, and the plane started to vibrate
and rotate. Something was wrong. The crew
started to question whether the landing gear was
in fact down and whether it was locked. While not
knowing exactly what was wrong, they certainly
knew that something was not right.
The pilot made what seemed to be a cautious
and wise decision. He decided to abort the landing
in order to check out the problem and determine
the best course of action. The plane was put in a
holding pattern.
For around forty-five minutes, the captain and
crew diligently investigated the problem and
prepared the passengers. Everyone was “on
board,” so to speak. However, another problem
was developing. The plane was running out of fuel.
They had more than enough fuel when they left
Denver, but they were burning it up while focusing
on the landing gear problem. The crew hadn’t
taken this fully into account. In fact, they didn’t
calculate how much time remained before they
would run out of fuel because they had become
blind to this issue.
As the plane ran out of fuel, the engines failed,
one after the other. The plane nosed downward
and crashed into a suburban area of Portland
around 6:15 p.m., only six miles from the airport.
The plane literally fell out of the sky. Ten people
died—two crew members and eight passengers.
Another twenty-three people were seriously
injured.
How could this have happened? Not because of any of the
“usual suspects.” There was no inexperience or dereliction of
duty among the crew, nor were drugs or lack of sleep a factor.
One important reason the tragedy occurred was that the crew
members didn’t speak up—or at least, not with conviction.
Why?
Real-life situations are always multiply determined. There
is never one reason for a sequence of events. Several
possibilities come to mind in this case. Perhaps the crew just
followed authority, the captain, who was focused on the
landing gear. Perhaps the stress prevented them from noticing
the fuel level; studies show that high levels of stress narrow
attention. Still, when they did notice that the fuel was low,
why did they not realize what that meant? Why weren’t they
aware of the danger it posed? Why did no one speak up?
I would suggest that the consensus itself inhibited the
expression of dissent but also shaped the crew’s thinking to
that perspective. It was not just where the crew’s attention was
focused that was a problem, but also the information they
sought, the alternatives they considered, and the strategies they
employed. Once everyone was on the same page, all focusing
on the landing gear, they narrowly viewed the situation only
from that perspective. They sought information about the
landing gear. They considered alternatives only within the
context of the landing gear problem. They did not consider the
possibility that such a focus had a downside. When faced with
information pertinent to another problem—namely, the fuel
situation—they failed to fully consider it or to appreciate the
growing danger. In fact, they did not even calculate the
amount of time remaining before they would run out of fuel.
We see the consequences of this thinking in the National
Transportation Safety Board accident report’s summary of the
last thirteen minutes of United Airlines Flight 173.
In the cockpit at 18:02:22, the flight engineer
said that they had about “three [3,000 pounds] on
the fuel and that’s it.” They were only five miles
south of the airport. At 18:03:23, Portland
approach asked about the fuel, and the captain
said, “About four thousand, well, make it three
thousand, pounds of fuel.” About three minutes
later, the captain said that they would be landing in
around five minutes. Almost simultaneously,
however, the first officer said, “I think you just lost
number four [engine].” He added, a few seconds
later, “We’re going to lose an engine.”
“Why?” asked the captain.
“We’re losing an engine,” the first officer said
again.
“Why?” the captain repeated.
“Fuel,” said the first officer. Almost seven
minutes later, the first officer warned Portland
approach: “Portland tower, United one seventy
three heavy. Mayday. We’re—the engines are
flaming out. We’re going down. We’re not going to
be able to make the airport.”
A minute later, the plane crashed into a wooded
section of suburban Portland. United Airlines Flight
173 had plenty of fuel when it left Denver. At the
crash site, however, there was no “usable fuel” left.
The plane had literally run out of gas.
“That’s it” when reporting a low fuel level of 3,000
pounds? Why did no one shout, “We’re running out of fuel!”
or, “We’re running out of time and need to land!” Everyone
seemed to be in agreement, busily trying to find the problem
with the landing gear. Even the captain asked, “Why?” when
told they had lost an engine. No one seemed to appreciate the
importance of the low amount of fuel remaining because they
had only one focus.
Which of us would have thought differently? Which of us
would have spoken up? Doing so would have meant
challenging the captain and the crew members who were all
“on the same page.” More importantly, which of us would
have even noticed that the plane was out of fuel? When
everyone is focused on one thing, they all lose sight of
relevant information and options. What we will see in this
book is that consensus creates one focus—the group’s. It
causes us to miss even the obvious.
In this example, most people recognize that dissent could
have had value if it had been correct. If someone had spoken
up more forcefully about the diminishing fuel, the crew might
have paid more attention to it. Even then, we know that people
do not always follow the truth. Not only does it depend on
who holds the truth, but people are more inclined to follow the
majority than the minority, right or wrong. However, what is
less recognized is that dissent has value, even when it is not
correct.
What we will see in this book is that the value of dissent
does not lie in its correctness. Even when wrong, dissent does
two things directly pertinent to the example. It breaks the blind
following of the majority. People think more independently
when consensus is challenged. Perhaps more importantly—
and this is the core message of this book—dissent stimulates
thought that is more divergent and less biased. Dissent
motivates us to seek more information and to consider more
alternatives than we would otherwise, spurring us to
contemplate the cons as well as the pros of various positions. I
would hazard a guess that had someone on United Airlines
Flight 173 challenged the focus on the landing gear, the crew’s
thinking about other possible problems—including most likely
the fuel—would have been stimulated.
I worry when I see colleagues and friends parse their words
or remain silent about their objections when they see the
presence of the will of the majority. I worry when I watch
individuals with a strong need for control at the helm of
groups. Whether it is in an organization or a start-up, in a cult
or on the board of a co-op building, we see how power
coupled with a need for control can manifest itself in hubris
and a tendency to silence opposition. Rather than encouraging
a culture that welcomes different views, such leaders make
sure that dissent is not present—or if it arises, that it is
punished. I have even seen board contracts with a friendly “be
a team player” provision cautioning new numbers to “respect
the collective authority… by not undermining majority
decisions… even when [they] may disagree.” The message
about dissent is clear. It is not welcomed.
The claims of this book are broad, but I don’t want you to
take them as pronouncements. I don’t want to persuade you
through stories, counting on your intuitive acceptance of the
claims. I want to persuade you by research facts, drawn from
research that has held up over time and in multiple settings.
When I do use narratives, it’s to illustrate the range and
applicability of the ideas I discuss, informed by the research.
They range from the United Airlines disaster to Edward
Snowden’s revelations about the National Security Agency
(NSA), to the Jonestown massacre, to the decision-making
procedures of successful hedge funds. My own interviews with
CEOs add to the mix. My aim is to help you recognize the
patterns of influence in the groups to which you belong
yourself and their effect on the quality of your own thoughts
and decisions. This book will address the complexity of
influence processes and hopefully will cause you to reconsider
advice that overestimates the value of consensus and
underestimates the value of dissent.
A CHALLENGE TO THE POPULAR VIEW OF CONSENSUS
The ideas presented here contrast with much common advice
as well as some popular books, such as the New York Times
best-seller The Wisdom of Crowds by James Surowiecki,
which points out the superiority of the judgments of “the
many.” Although that book is a good corrective to the value
placed on the single “expert,” the accuracy of large numbers of
people is limited. The research supports the relative accuracy
of large numbers of people when the task involves common
knowledge and the judgments are independent—that is, when
people are not influenced by one another. These constraints are
important in assessing situations where numbers may provide
a statistical advantage. However, the larger concern is that
such books can inadvertently give the impression that
majorities are likely correct, rather than that they may be
correct under certain circumstances. This book also serves as a
counter to books, such as James Collins and Jerry Porras’s
Built to Last, that link success to cultlike corporate cultures
that foster like-mindedness and suppress dissent. Those are the
cultures that recommend being a team player, promoting
consensus, and being diplomatic (or silent) about
disagreements.
This book also contrasts with the work of many researchers
of social influence, a field with a long history in social
psychology. Social influence is often considered the core
issue, since it deals with the influence “that people have upon
the beliefs or behavior of others.” Most of that research has
been guided, however, by two tendencies. One is an
assumption that influence flows from the strong to the weak,
from the many to the few. Thus, there have been many studies
of the persuasive power of the majority, but far fewer studies
of the ways in which the minority persuades. Though research
has now documented the ability of the minority voice to
persuade, many in the field still view it as unlikely or assume
that it is subject to the same patterns as persuasion by a
majority. We will see that this is not correct. The ways in
which majority and minority voices persuade others of their
position are very different and are manifested in different
ways.
The other tendency in the research literature is to reduce
the complexity of the ways in which people affect our
thoughts, beliefs, and behaviors to one of gaining our
agreement. Reducing the broad area of social influence to
persuasion is akin to a focus solely on winning—getting
people to agree with you, to say yes to you, or to adopt your
position. Your coworker doesn’t like your preference for a new
hire, so you get her to agree with you. You favor a guilty
verdict when serving on a jury and convince a fellow juror to
vote that way. For decades, social psychologists have studied
influence in this narrow sense of persuasion—who, when,
how, and why you can get people to agree with you—and used
a relatively easy measure for it. If you start out taking position
A and I take position B, then your movement from position A
to position B indicates that I have persuaded you. Research is
easier when we confine it to scales that measure movement
from A to B.
But persuasion is different from changing the way someone
thinks about an issue, and it’s different from stimulating
thought. If upon hearing your position on the defendant’s guilt
or innocence I look at the evidence again and consider the pros
and cons of each position and alternative possibilities, you
have influenced my thinking. I may not agree with you in the
end, but you have influenced how I think and the quality of the
judgments and decisions I make. I have engaged in what most
researchers consider good decision-making—the kind that on
balance leads to better decisions. Did a person standing over
the body at the crime scene flee because he was guilty, or did
he flee because he was afraid he would be accused? If I
consider both options rather than rush to judgment, I am likely
to make a better decision. From a research point of view, it is
harder to study something like stimulated thought, which is
not as easily schematized as persuasion. You have to find ways
to measure the information people seek, the options they
consider, the quality of their decisions, and the creativity of
their solutions. Thankfully, as this book will demonstrate, we
have found reliable ways to do this.
If we study only persuasion—that more narrow form of
influence aimed at gaining agreement—we don’t get to the
quality of the decision. We rarely know whether a decision
was right or not, since our assessment partly depends on our
own values. Was the merger a good idea? Was the majority on
a 10–2 verdict correct? Would a 12–0 verdict have been
correct? We can’t know for sure. In the O. J. Simpson case,
which jury was correct: the jury that came to a “not guilty”
verdict in the criminal case or the jury that voted “guilty” in
the civil case? We all have our opinions on this case, and we
all know how clever we can be when we justify our positions.
The best way of assessing quality is to instead assess the
decision-making process.
We do know something about the process of good decision-
making. On balance, a good process leads to a good decision.
Good decision-making, at its heart, is divergent thinking.
When we think divergently, we think in multiple directions,
seek information and consider facts on all sides of the issue,
and think about the cons as well as the pros. Bad decision-
making is the reverse. Thinking convergently, we focus more
narrowly, usually in one direction. We seek information and
consider facts that support an initial preference. We tend not to
consider the cons of the position, nor do we look at alternative
ways of interpreting the facts.
Perhaps you had a grade school arithmetic teacher who
taught you to check your work by doing it two different ways.
To this day, I don’t just add things up the same way a second
or third time to check a calculation. Rather than likely repeat
the same mistake, I check my work a different way. I subtract
one element from the sum to see what remains. I can add up
15 + 28 several times and continue to think it equals 33
(instead of 43). If I subtract 15 from 33, I will see that I made
a mistake: 33 − 15 doesn’t equal 28. I am then far more likely
to look more carefully and find that the sum is 43. By using
divergent thinking—that is, approaching an issue from several
vantage points—we are likely to make better decisions. This is
the kind of thinking that dissent stimulates.
My own recognition of the importance of stimulated
thought stemmed from my long-standing interest in jury
decision-making. It was in doing research on juries and
consulting with lawyers that I came to recognize that influence
is far more powerful than persuasion. I also realized that I was
less interested in who “won” than in the quality of the
decisions reached by juries. I could make money—a lot of it—
advising lawyers on how to win by crafting their opening and
closing arguments for persuasive impact. I could also show
lawyers how to assess the dynamics of a jury in order to know
which jurors to remove by peremptory challenge, not just
because of their likely vote but also because of their ability to
persuade the others. When the focus is on winning, everything
is about persuasion—about gaining agreement with the
position I favor. However, it became clear to me that my
interests were in the quality of the decision—and in justice.
Regardless of who wins, is the verdict the correct one?
In our initial studies, my colleagues and I noticed that,
when there is dissent, the decision-making improves. Our
simulated juries that included dissenters considered more facts
and more ways of viewing those facts. This led to decades of
research on the ways in which dissent stimulates the way we
think, the way we solve problems, and the way we detect
solutions. However, we also learned about the power of
consensus to stimulate our thinking as well—in diametrically
different ways.
We designed most of our experiments to study both
consensus and dissent. We predicted and found very different
results simply on the basis of whether we were looking at the
influence of “the many” or “the few.” Moreover, we found the
same pattern of results over and over. Consensus narrows,
while dissent opens, the mind. Both affect the quality of our
decisions. The take-home message of the research and this
book is that there are perils in consensus and there is value in
dissent.
This message flies in the face of much advice these days.
We are told the benefits of liking and being liked, of “fitting
in” with the culture. We are taught to believe in the wisdom of
the majority and reminded of the likely repercussions of being
different, of not “fitting in” or of “speaking up” when we
disagree.
Many books, consultants, and academicians echo this
advice of “fitting in.” Some of it is correct. There are certainly
benefits to being liked and to belonging, and there are
certainly risks associated with dissent. What is often not
reported is that belonging has a price—our agreement. Paying
this price often leads to unreflective thinking, bad decisions,
and reduced creativity, not to mention boredom, vulnerability,
and deadened affect. Have you ever wanted to scream when
everyone was pandering and praising each other and no one
would talk about the elephant in the room? For example, have
you wanted to yell, “Are we crazy to hire this guy?” or,
“Should we really be making this merger?”
As the Japanese saying goes: the nail that sticks up will be
hammered down. However, too often there is no nail standing
up. Consensus prevails, conformity ensues, and group
processes look more like groupthink. Ethical violations and
problems within an organization go unreported and are not
considered. Everyone is walking on eggshells, strategizing and
deciding when to speak up and when to be quiet. All the while,
we are in these deadening meetings and interactions where
many people are often a bit fake—often opportunistic. This
isn’t the case for everyone, of course. Some genuinely believe
in the majority position, but they are still influenced by the
incentives to agree and belong. When groupthink takes over,
we can lose the value of each individual’s input, the
experiences and opinions each can bring to bear on a decision
or problem. We also lose the stimulating properties of dissent.
Challenging the opinions of others takes courage. I would
argue that it also takes conviction to dissent. People don’t like
it when you argue another position. I myself still get irritated
when people disagree with me. If I am honest, I am sure that
they are at best misinformed. And I study this stuff. What I do
know, however, is that the challenge that they pose makes me
a better decision-maker and a more creative problem-solver.
What I also know is that these benefits do not derive from a
diversity of demographics (age, gender, race, and so on). Nor
do they come from education and training, which, even though
well meant, are limited and have benefits that are often
overblown. What I have learned is that these benefits accrue
from dissent, from being challenged. We benefit when there
are dissenting views that are authentically held and that are
expressed over times.
THE BLUEPRINT OF THE BOOK
In Part I, we focus on persuasion and the substantial research
that helps us to understand how majority and minority views
get us to agree with them. I want you to see and worry about
the power of the majority, especially when it is unchallenged,
for we tend to follow and agree with the majority right or
wrong. Too often we assume that truth lies in numbers rather
than assess the information rationally. The problem is that we
do this unreflectively. We blindly follow the majority. This
tendency can be seen in consumer behavior, in ad campaigns,
in stock bubbles, and in what we see and believe even in our
daily lives.
Even in these situations, I want you to see that dissent
provides value. It takes only one dissenting voice to liberate us
from the hold of the majority. Dissent makes us better able to
think independently, to “know what we know.” Dissent can
also persuade us, gaining our agreement with its position. We
will see that persuasion by dissent is a more artful journey than
persuasion by the majority. Considering that people have many
reasons to resist agreement with a dissenter, we will see how
the clever use of procedures and techniques as simple as
varying the order in which people speak can make all the
difference for the dissenter’s ability to persuade.
Once we better understand how consensus and dissent gain
agreement, we are in a position to understand why they
stimulate different kinds of thinking. This area, covered in Part
II, is where I have spent the greater part of my professional
career. We will see detailed research evidence on how
consensus and dissent stimulate the ways in which we think
and decide, and we will see these processes replicated across
experiments and real-life situations such as the Jonestown
massacre and Edward Snowden’s leak of NSA data.
Part III turns to groups and applications. Groups are
complicated, as they involve several people in interaction.
However, scores of studies have uncovered well-established
patterns for how and why groups find consensus. Groups often
arrive at consensus too soon—and not for good reasons. Some
of these patterns are captured by the popular term
“groupthink.” We will also see the role of dissent in improving
group decision-making. Dissent does not just thwart
groupthink; it actually increases the quality of the decision-
making process.
The message of this book is not that we should create
dissent, but that we should permit dissent and embrace it when
it is present. The distinction is important, as the most
important element of effective dissent is its authenticity, as our
research repeatedly underscores. This is one reason why
techniques such as playing devil’s advocate do not work. They
are role-playing and do not challenge bias or stimulate
divergent thinking, as does authentic dissent. Authenticity is
also a reason why, when brainstorming, rules such as “do not
criticize each other’s ideas” are ill advised.
When you finish this book, I hope that you will be wary of
consensus because you recognize its pitfalls, especially in your
own thinking, that you will use mechanisms to reduce
automatic thinking, and that you will better recognize the
importance of thinking for yourself. As a leader, the hope is
that you will better manage group processes and will have
techniques at your fingertips to keep discussion open, avoiding
premature closure on decisions. Just as important, I hope that
you will learn to welcome dissent and not just tolerate it,
having come to understand that it has value even when it is
wrong.
Above all, I hope that this book persuades you not to
suppress dissent. We are all subject to biases and our own
prejudices, including our tendency to try to silence those who
irritate us by disagreeing with us. However, dissent makes us
more complex thinkers. In prompting us to consider the pros
and cons of all positions, dissent makes us reconsider our own
position, which itself inevitably has cons as well as pros, if we
bother to analyze it carefully.
The grand hope of this book is that it will liberate you. One
form of this is the liberation to “speak up”—being brave
enough to tell the surgeon that he may be operating on the
wrong limb, or to tell your boss that his latest plan has a fatal
flaw, or to let your best friend know that she is about to buy an
expensive dress that is ill suited to her. You will hopefully
confront what you think are wrong decisions knowing that,
even if you don’t persuade the other person, you will stimulate
her thinking. You will know that, on balance, your speaking up
has improved the decisions and judgments of your groups.
Another form of liberation is to be less afraid to think
differently from others. Whether or not you decide to express
it, you don’t want to lose the ability to “know what you know.”
Nor do you want to fall prey to the self-brainwashing that
often accompanies consensus and a need to belong. Cults
know the power of self-brainwashing all too well. So do
abusive individuals. There is liberation in recognizing the
source of their power as well as your own.
A quote I often use and have always loved comes to us
from Senator William Fulbright: “We must learn to welcome
and not to fear the voices of dissent.” I could not summarize
this book more succinctly—unless by adding this remark from
Mark Twain: “Whenever you find that you are on the side of
the majority, it is time to reform—(or pause and reflect).”
TITLE PAGE
COPYRIGHT
DEDICATION
ACKNOWLEDGMENTS
INTRODUCTION: FEAR CONSENSUS, LOVE …
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*DDB is used for the first three years
For example
The inbound logistics for William Instrument refer to purchase components from various electronic firms. During the purchase process William need to consider the quality and price of the components. In this case
4. A U.S. Supreme Court case known as Furman v. Georgia (1972) is a landmark case that involved Eighth Amendment’s ban of unusual and cruel punishment in death penalty cases (Furman v. Georgia (1972)
With covid coming into place
In my opinion
with
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The ability to view ourselves from an unbiased perspective allows us to critically assess our personal strengths and weaknesses. This is an important step in the process of finding the right resources for our personal learning style. Ego and pride can be
· By Day 1 of this week
While you must form your answers to the questions below from our assigned reading material
CliftonLarsonAllen LLP (2013)
5 The family dynamic is awkward at first since the most outgoing and straight forward person in the family in Linda
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The most important benefit of my statistical analysis would be the accuracy with which I interpret the data. The greatest obstacle
From a similar but larger point of view
4 In order to get the entire family to come back for another session I would suggest coming in on a day the restaurant is not open
When seeking to identify a patient’s health condition
After viewing the you tube videos on prayer
Your paper must be at least two pages in length (not counting the title and reference pages)
The word assimilate is negative to me. I believe everyone should learn about a country that they are going to live in. It doesnt mean that they have to believe that everything in America is better than where they came from. It means that they care enough
Data collection
Single Subject Chris is a social worker in a geriatric case management program located in a midsize Northeastern town. She has an MSW and is part of a team of case managers that likes to continuously improve on its practice. The team is currently using an
I would start off with Linda on repeating her options for the child and going over what she is feeling with each option. I would want to find out what she is afraid of. I would avoid asking her any “why” questions because I want her to be in the here an
Summarize the advantages and disadvantages of using an Internet site as means of collecting data for psychological research (Comp 2.1) 25.0\% Summarization of the advantages and disadvantages of using an Internet site as means of collecting data for psych
Identify the type of research used in a chosen study
Compose a 1
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effect relationship becomes more difficult—as the researcher cannot enact total control of another person even in an experimental environment. Social workers serve clients in highly complex real-world environments. Clients often implement recommended inte
I think knowing more about you will allow you to be able to choose the right resources
Be 4 pages in length
soft MB-920 dumps review and documentation and high-quality listing pdf MB-920 braindumps also recommended and approved by Microsoft experts. The practical test
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One thing you will need to do in college is learn how to find and use references. References support your ideas. College-level work must be supported by research. You are expected to do that for this paper. You will research
Elaborate on any potential confounds or ethical concerns while participating in the psychological study 20.0\% Elaboration on any potential confounds or ethical concerns while participating in the psychological study is missing. Elaboration on any potenti
3 The first thing I would do in the family’s first session is develop a genogram of the family to get an idea of all the individuals who play a major role in Linda’s life. After establishing where each member is in relation to the family
A Health in All Policies approach
Note: The requirements outlined below correspond to the grading criteria in the scoring guide. At a minimum
Chen
Read Connecting Communities and Complexity: A Case Study in Creating the Conditions for Transformational Change
Read Reflections on Cultural Humility
Read A Basic Guide to ABCD Community Organizing
Use the bolded black section and sub-section titles below to organize your paper. For each section
Losinski forwarded the article on a priority basis to Mary Scott
Losinksi wanted details on use of the ED at CGH. He asked the administrative resident