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“The Discipline of Organizing” Meets “Data Science”
Position Paper for “Information Science to Data Science” Workshop at iConference 2017
ABSTRACT
Many books and articles about data science, machine learning, and
predictive analytics make bold predictions that these emerging
fields will fundamentally change the world. Most of the most
provocative claims forecast radical changes to how information is
organized and used, two activities that are at the core of the
iSchools. The goal of this short article is to propose bridges
between the concepts and methods of resource organization,
description, and interactions with resources as they are typically
taught in iSchools with the concepts and methods of data science.
These bridges should make it easier for iSchools to view data
science as a complementary discipline rather than a contrasting and
competitive one.
KEYWORDS
Organizing; classification; data science; machine learning;
sensemaking
1 INTRODUCTION
Wikipedia begins its definition of “Data Science” with this
puzzling note (Figure 1) that should provoke anyone associated
with an iSchool to reflect on their own and their institution’s
perspective on data science. Many books and articles about data
science, machine learning, and predictive analytics make bold
predictions that these emerging fields will fundamentally change
the world ([1], [2], [3], etc.). Most of the most provocative claims
forecast radical changes to how information is organized and used,
two activities that are at the core of the iSchools.
Figure 1: Wikipedia Defines “Data Science”.
It is undeniable that the new methods and tools of data science and
machine learning let us organize more information, to do it faster,
and to make predictions based on what people have clicked on,
bought, or said. Data science introduces new considerations of scale
and speed when massive computational power and new statistical
techniques are harnessed to organize and act on information. Some
data science enthusiasts go so far as to say that because machine
learning algorithms can discover interesting patterns in data, there
is much less need for systematic resource organization and
description.
Many iSchools have responded strongly to data science, and they
are doing mostly the same things: adding new courses, modifying
existing ones, hiring new faculty, and even changing the names of
their schools or departments to include “data.” Some iSchools teach
some of the algorithms and technology of data science, but they are
unlikely to dislodge computer science and statistics departments as
their primary home. iSchools differ in where they view data science
on the continuum from “opportunity” to “threat,” but an impartial
observer can easily see concerns at iSchools that data science will
concentrate its academic resources in computer science and
statistics and possibly undermine their own missions and appeal to
students and faculty.
This article suggests that iSchools can and should assert themselves
as first class citizens with respect to data science because at its core,
data science is about how resources are selected, described, and
organized; concepts and methods with a long tradition in
information and library science and that remain foundational topics
in iSchool curricula. Instead of organizing and describing the books
in a library or the products in a physical warehouse, a data scientist
might create a data warehouse by organizing information about
books or products into massive data tables, treating each resource as
a row and its descriptive properties as the columns. After people
might have organized books or products into categories, machine
learning techniques might classify new books or products using
those categories, or perhaps discover new categories based on
access or purchasing behaviors. But while the techniques of data
science are new, many of the challenges are not; data scientists need
to select resources wisely and decide how best to describe them;
they need to understand that resource description and categorization
can be biased; they need to understand the tradeoffs and
complements between people and computers; and, they need to test
the discoveries that algorithms make with controlled experiments.
The goal of this short article is to propose bridges between the
concepts and methods of resource organization, description, and
interactions with resources as they are typically taught in iSchools
with the concepts and methods of data science. These bridges
should make it easier for iSchools to view data science as a
complementary discipline rather than a contrasting and
competitive one.
2 THE DISCIPLINE OF ORGANIZING
The Discipline of Organizing (TDO) [4], first published in 2013, is
a novel synthesis of insights and perspectives from the fields of
Information Science to Data Science Workshop, iConference 2017
library and information science, computer science, informatics,
business, law, cognitive science, among several others in which
concepts and methods about organizing resources are foundational.
Computer scientists and library/information science professionals
often address the same questions without realizing it. Instead of
emphasizing the specific types of organizing systems that each of
those fields is known for – libraries, museums, data repositories,
business information systems, human resource organizations, and
so on – TDO recasts organizing as a design activity to answer
questions about what is organized and why, how much, when, by
what means, and where the organizing is accomplished. This
“design dimensions” or “design patterns” perspective is
forwardlooking and generative, and its more abstract concepts and
vocabulary enable interdisciplinary collaboration and innovation
not previously possible because of the unifying concept of an
“organizing system” – an intentionally arranged collection of
resources and a set of supported interactions.
In 2014, TDO was named an “Information Science Book of the
Year” by the Association for Information Science and Technology.
TDO is now used as a primary or secondary text for (mostly)
graduate and undergraduate courses in more than 80 schools
(mostly iSchools) in over 20 countries.
TDO has been substantially revised each year since it was first
published, which is unusual but which ratifies the idea that multiple
perspectives can reinforce a shared focus on organizing, while at
the same time highlighting the concepts, technologies, and
methods that distinguish those points of view. The 4th edition [5],
published in August 2016, builds bridges between organizing and
data science, and introduces a new “data science” category of
disciplinespecific content.
3 THE BRIDGES BETWEEN ORGANIZING
AND DATA SCIENCE
The bridges in “The Discipline of Organizing” to data science
include broadening the concept of “usage metadata,” reframing
descriptive statistics as organizing techniques, expanding the
treatment of classification to include computational methods, and
emphasizing examples of data-driven resource selection,
organization, interaction, and maintenance. The following sections
of this short article are adapted excerpts from the book.
R
science has long discussed how records of a user choice in
accessing, browsing, buying, highlighting, linking, and other
interactions become “usage metadata” that can inform the design
and operation of information systems. When organizing systems
contain digital resources, or physical resources that have sensing,
recording, or communication capabilities, these interaction traces
can be made predictable, persistent, and consistent. TDO introduces
the concept of “interaction resource” to broaden the traditional
information science concept of “usage metadata” to include data
collected from the “Internet of Things” and other dataproducing
resources.
The most common use of interaction resources in organizing
systems is in search engines to adjust the order of search hits, select
ads, or personalize the content of web pages.
3.2 Common activities for organizing “data” and
everything else
Every organizing system requires four activities: selecting
resources, organizing them, designing interactions with them, and
maintaining the resources and the interactions. We can see these
activities in the organization of a kitchen, a library, a museum, or an
enterprise information system. How explicit these activities are
depends on the scope, the breadth or variety of the resources, and
the scale, the number of resources that the organizing system
encompasses. In the organizing systems for the “memory
institutions” studied in many iSchools, many of these common
activities have domain-specific vocabulary like “acquisition,”
“accessioning,” and “ingesting” but using more neutral language
like “adding resources to a collection” enables more
interdisciplinary collaboration and innovation.
These same four activities can be seen in data science, and doing so
makes it straightforward to view the field of data science as a subdiscipline of information organization. Data is selected, described
to enable its organization, and then interacted with” using
algorithms that enable classification, prediction, recommendation,
inference, and hypothesis testing. Finally, the data in an organizing
system is maintained over time, with discipline-specific words like
“governance,” “de-duplication,” and “cleansing,” but it is easy to
recognize the commonalities with maintenance activities for “nondata” resources like “curation” and “restoration” for physical
resources, and “layoff” or “retirement” for human resources.
2
. Glushko
3.1 The Concept of “Interaction Resource”
(“usage metadata”)
Data science obviously relies on data, but where does the data come
from? A great deal of it is created when people interact with
organized resources or when resources with agency interact with
each other or with their environments. But this data that provides
much of the fodder for data science is similar in concept to
interaction traces like fingerprints, a coffee cup stain on a
newspaper, or the erosion on a shortcut path across a lawn, where
the record of the interaction is less persistent and consistent only
because there is no separate technology for capturing it. Information
One undeniable impact of data science on organizing systems of
all types is that these four activities have becoming increasingly
datadriven.
3.2.1 Data-driven Resource Selection
Selection methods and criteria vary across resource domains, but
their common purpose is to determine how well the resource
satisfies the specifications for the properties or capabilities that
enable a person or nonhuman agent to perform the intended
activities.
Data science has enabled the selection of human-resources to
become highly data-intensive; employers hire people after
assessing the match between their competencies and capabilities
Information Science to Data Science Workshop, iConference 2017
(expressed verbally or in a resume, or demonstrated in some
qualification test) and what is needed to do the required activities.
The popular LinkedIn site, which has hundreds of millions of
resumes that it data mines to find statistically superior job
candidates, is literally a gold mine for the company because it
makes money by referring those candidates to potential
employers. Data-intensive hiring practices in baseball are
entertainingly presented in the book entitled Moneyball [6] or the
2011 movie starring Brad Pitt.
3.2.2 Data-driven Organizing
Organizing systems arrange resources according to many different
principles. Most organizing systems use principles that are based
on specific resource properties or properties derived from the
collection as a whole. What properties are significant and how to
think about them depends on the number of resources being
organized, the purposes for which they are being organized, and
on the experiences and implicit or explicit biases of the intended
users of the organizing system.
Data science also needs to choose resource properties (although it
usually calls them “features” rather than “properties”). Another
way to bridge data science with organizing is to recognize that
using descriptive statistics about a collection or dataset is a way to
summarize it concisely and identify the properties that might be
most useful as organizing principles. Statistical descriptions can
be created for any resource property, with the simplest being the
number of resources that have the property or some particular
value of it, such as the number of times a particular word occurs
in a document or the number of copies a book has sold.
Descriptive statistics and associated visualizations can suggest
which properties make good organizing principles because they
exhibit enough variation to distinguish resources in their most
useful interactions. For example, it probably isn’t useful to
organize books according to their weight because almost all books
weigh between ½ and 2 pounds, unless you are in the business of
shipping books and paying according to how much they weigh.
.. Glushko
No matter how measurements are distributed, it can be useful to
employ descriptive statistics to organize resources or observations
into categories or quantiles that have the same number of them.
Quartiles (4 categories), deciles (10), and percentiles (100) are
commonly used partitions.
Descriptive statistics do not identify the categories they create by
giving them familiar cultural or institutional labels the way that
human organizers do. Instead, they create implicit categories of
items according to how much they differ from the most typical or
frequent ones. For example, in any dataset where the values follow
the normal distribution, statistics of central tendency and dispersion
serve as standard reference measures for any observation. These
statistics identify categories of items that are very different or
statistically unlikely outliers, which could be signals of
measurement errors, poorly calibrated equipment, employees who
are inadequately trained or committing fraud, or other problems.
Categories that people create and label also can be used more
explicitly in computational algorithms and applications. In machine
R
learning [2], a program that can assign an item or instance to one or
more existing categories is called a classifier. Numerous techniques
for creating classifiers do so via training them with already correctly
categorized examples. This is called “supervised learning” because
it starts with instances labeled by category, and it involves learning
because over time the classifier improves its performance by
adjusting the weights for features that distinguish the categories.
An important difference between categories created by people and
those created computationally is that the former can almost always
be inspected and reasoned about by other people, but only some of
the latter can. A computational model that categorizes loan
applicants as good or poor credit risks probably uses properties like
age, income, home address, and marital status, so that a banker can
understand and explain a credit decision. However, many other
computational categories, especially those that created by clustering
and deep learning techniques, are inseparable from the
mathematical model that learned to use them, and as a result are
uninterpretable by people.
3.2.3 Data-driven Interactions
Organizing systems can use stored or computed information about
user preferences or past interactions to anticipate user needs or
personalize interactions. This has the effect of substituting
information for interaction to make interactions unnecessary or
simpler.
For example, drivers no longer need to stop at toll booths, because
most human toll-takers have been replaced by smart “toll tags” that
broadcast their identity when the car they are in passes a radio
receiver at a tolling location. Each interaction resource created
identifies an account and credit card with which to pay the toll; taken
together, the collection of these interaction resources can be used as
the primary resources in other organizing systems that
3
manage traffic congestion, make recommendations to drivers about
detours, or that support road design.
3.2.4 Data-driven Maintenance
Recent developments in sensor technology enable very extensive
data collection about the state and performance of machines,
engines, equipment, and other types of physical resources, including
human ones. (Are you wearing an activity tracker right now?) When
combined with historical information about maintenance activity,
predictive analytics techniques can use this data to determine
normal operating ranges and indicators of coming performance
degradation or failures [3]. Predictive maintenance can maximize
resource lifetimes while minimizing maintenance and inventory
costs.
4 BUILDING BIGGER BRIDGES: FROM
SENSEMAKING TO SCIENCE
Bridging from organizing to data science is an assertion that the
disciplines are complementary rather than competitive, and we can
strengthen the connection by situating both in a larger context of
human activity that includes sensemaking and science.
Information Science to Data Science Workshop, iConference 2017
4.1 Sensemaking as “the Mother of Organizing”
For thousands of years, even before the invention of written
language, people have systematically collected things, information
about those things, and observations of all kinds to understand how
their world works. Paleolithic humans made cave paintings
depicting the results of hunts and animal migrations; ancient
Egyptians recorded the annual floods of the Nile River in stone
carvings; and Babylonian, Egyptian, Chinese, and Mesoamerican
astronomers organized lunar, solar, and planetary observations as
calendars starting about five thousand years ago. These diverse
efforts to impose meaning on experience by recording, analyzing,
organizing, and reorganizing observations can be collectively
described as sensemaking ([7], [8]).
R
and refine models of any type by systematically varying the
conditions under which observations are made to discover how the
results change in different situations.
4.4 From Data Science to Science
A fundamental challenge in sensemaking and modeling is balancing
the competing goals of understanding a particular collection or
dataset and applying that understanding to new instances. Models
can differ in the number of resource descriptions they use as
parameters, and it is easy and tempting to overfit a model by using
more parameters that capture random variations in observations.
Overfitting produces spurious accuracy in reproducing the original
observations, but it makes models less generalizable.
Some sensemaking is hard-wired by evolution in perceptual
mechanisms that simplify and organize the information our senses
collect (like Gestalt mechanisms), but that sort of automatic
sensemaking is dominated by intentional sensemaking.
The highest level of sensemaking is the creation of scientific
theories, with a preference for “more organized” or simpler
explanations for the observations, the principle known as Occam’s
razor. This is the bridge between data science and science.
4.2 From Sensemaking to Organizing
REFERENCES
Making sense of a single resource collection involves identifying the
properties and principles that contrast the instances or observations.
This is the bridge between sensemaking and organizing. Organizing
systems use those principles and properties to enable more welldefined and functional interactions.
Sensemaking becomes more intentional when systematic statistical,
experimental, and scientific methods are consciously followed to
extract and organize knowledge from collections of samples,
observations, or measurements.
4
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