only bid if you know Python and algorithms - Computer Science
1
You may choose to use whatever programming language you want. However, you must provide
clear instructions on how to compile and/or run your source code. I recommend using a
modern language, such as Python, R, or Matlab as learning these languages can help you if you
were to enter the machine learning or artificial intelligence field in the future.
All analyses performed and algorithms run must be written from scratch. That is, you may not
use a library that can perform coordinate descent, cross validation, elastic net, least squares
regression, optimization, etc. to successfully complete this programing assignment (though you
may reuse your relevant code from Programming Assignment 1). The goal of this assignment is
not to learn how to use particular libraries of a language, but it is to instead understand how
key methods in statistical machine learning are implemented. With that stated, I will provide
10\% extra credit if you additionally implement the assignment using built-in statistical or
machine learning libraries (see Deliverable 6 at end of the document).
Brief overview of assignment
In this assignment you will still be analyzing the same credit card data from π = 400 training
observations that you examined in Programming Assignment 1. The goal is to fit a model that
can predict credit balance based on π = 9 features describing an individual, which include an
individualβs income, credit limit, credit rating, number of credit cards, age, education level,
gender, student status, and marriage status. Specifically, you will perform a penalized
(regularized) least squares fit of a linear model using elastic net, with the model parameters
obtained by coordinate descent. Elastic net will permit you to provide simultaneous parameter
shrinkage (tuning parameter π β₯ 0) and feature selection (tuning parameter πΌ β [0,1]). The
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two tuning parameters π and πΌ will be chosen using five-fold cross validation, and the best-fit
model parameters will be inferred on the training dataset conditional on an optimal pair of
tuning parameters.
Data
Data for these observations are given in Credit_N400_p9.csv, with individuals labeled on
each row (rows 2 through 401), and input features and response given on the columns (with
the first row representing a header for each column). There are six quantitative features, given
by columns labeled βIncomeβ, βlimitβ, βRatingβ, βCardsβ, βAgeβ, and βEducationβ, and three
qualitative features with two levels labeled βGenderβ, βStudentβ, and βMarriedβ.
Detailed description of the task
Recall that the task of performing an elastic net fit to training data
{(π₯1,π¦1),(π₯2,π¦2),β¦,(π₯π,π¦π)} is to minimize the cost function
π½(π½,π,πΌ) = β(π¦π ββπ₯πππ½π
π
π=1
)
2
π
π=1
+π(πΌβπ½π
2
π
π=1
+(1βπΌ)β|π½π|
π
π=1
)
where π¦π is a centered response and where the input π features are standardized (i.e., centered
and divided by their standard deviation). Note that we cannot use gradient descent to minimize
this cost function, as the component β |π½π|
π
π=1 of the penalty is not differentiable. Instead, we
use coordinate descent, where we update each parameter π, π = 1,2,β¦,π, in turn, keeping all
other parameters constant, and using sub-gradient rather than gradient calculations. To
implement this algorithm, depending on whether your chosen language can quickly compute
vectorized operations, you may implement coordinate descent using either Algorithm 1 or
Algorithm 2 below (choose whichever you are more comfortable implementing). Note that in
languages like R, Python, or Matlab, Algorithm 2 (which would be implemented by several
nested loops) may be much slower than Algorithm 1. Also note that if you are implementing
Algorithm 1 using Python, use numpy arrays instead of Pandas data frames for computational
speed. For this assignment, assume that we will reach the minimum of the cost function within
a fixed number of steps, with the number of iterations being 1000.
3
Algorithm 1 (vectorized):
Step 1. Fix tuning parameters π and πΌ
Step 2. Generate π-dimensional centered response vector π² and π Γπ standardized
(centered and scaled to have unit standard deviation) design matrix π
Step 3. Precompute ππ,π = 1,2,β¦,π, as
ππ = βπ₯ππ
2
π
π=1
Step 4. Randomly initialize the parameter vector π½ = [π½1,π½2,β¦,π½π]
Step 5. For each π, π = 1,2,β¦,π:
compute
ππ = xπ
π(π²βππ½ +xππ½π)
and set
π½π =
sign(ππ)(|ππ|β
π(1βπΌ)
2
)
+
ππ +ππΌ
Step 6. Repeat Step 5 for 1000 iterations or until convergence (vector π½ does not change)
Step 7. Set the last updated parameter vector as οΏ½ΜοΏ½ = [οΏ½ΜοΏ½1, οΏ½ΜοΏ½2,β¦, οΏ½ΜοΏ½π]
4
Algorithm 2 (non-vectorized):
Step 1. Fix tuning parameters π and πΌ
Step 2. Generate π-dimensional centered response vector π² and π Γπ standardized
(centered and scaled to have unit standard deviation) design matrix π
Step 3. Precompute ππ,π = 1,2,β¦,π, as
ππ = βπ₯ππ
2
π
π=1
Step 4. Randomly initialize the parameter vector π½ = [π½1,π½2,β¦,π½π]
Step 5. For each π, π = 1,2,β¦,π:
compute
ππ = βπ₯ππ
(
π¦π ββπ₯πππ½π
π
π=1
πβ π )
π
π=1
and set
π½π =
sign(ππ)(|ππ|β
π(1βπΌ)
2
)
+
ππ +ππΌ
Step 6. Repeat Step 5 for 1000 iterations or until convergence (vector π½ does not change)
Step 7. Set the last updated parameter vector as οΏ½ΜοΏ½ = [οΏ½ΜοΏ½1, οΏ½ΜοΏ½2,β¦, οΏ½ΜοΏ½π]
Note that we define
sign(π₯) = {
β1 if π₯ < 0
1 if π₯ β₯ 0
π₯+ = {
0 if π₯ < 0
π₯ if π₯ β₯ 0
and we use the notation xπ as the πth column of the design matrix π (the πth feature vector).
This vector by definition is an π-dimensional column vector.
When randomly initializing the parameter vector, I would make sure that the parameters start
at small values. A good strategy here may be to randomly initialize each of the π½π, π = 1,2,β¦,π,
parameters from a uniform distribution between β1 and 1.
Effect of tuning parameter on inferred regression coefficients
You will consider a discrete grid of nine tuning parameter values π β
{10β2,10β1,100,101,102,103,104,105,106} where the tuning parameter is evaluated across
a wide range of values on a log scale, as well as six tuning parameter values πΌ β {0,
1
5
,
2
5
,
3
5
,
4
5
,1}.
For each tuning parameter value pair, you will use coordinate descent to infer the best-fit
model. Note that when πΌ = 0, we obtain the lasso estimate, and when πΌ = 1, we obtain the
ridge regression estimate.
5
Deliverable 1: Illustrate the effect of the tuning parameter on the inferred elastic net
regression coefficients by generating six plots (one for each πΌ value) of nine lines (one for
each of the π = 9 features), with the π¦-axis as οΏ½ΜοΏ½π, π = 1,2,β¦,9, and the π₯-axis the
corresponding log-scaled tuning parameter value log10(π) that generated the particular οΏ½ΜοΏ½π.
Label both axes in all six plots. Without the log scaling of the tuning parameter π, the plots
will look distorted.
Choosing the best tuning parameter
You will consider a discrete grid of nine tuning parameter values π β
{10β2,10β1,100,101,102,103,104,105,106} where the tuning parameter is evaluated across
a wide range of values on a log scale, as well as six tuning parameter values πΌ β {0,
1
5
,
2
5
,
3
5
,
4
5
,1}.
For each tuning parameter value pair, perform five-fold cross validation and choose the pair of
π and πΌ values that give the smallest
CV(5) =
1
5
βMSEπ
5
π=1
where MSEπ is the mean squared error on the validation set of the πth-fold.
Note that during the five-fold cross validation, you will hold out one of the five sets (here 80
observations) as the Validation Set and the remaining four sets (the other 320 observations)
will be used as the Training Set. On this Training Set, you will need to center the output and
standardize (center and divided by the standard deviation across samples) each feature. These
identical values used for centering the output and standardizing the input will need to be
applied to the corresponding Validation Set, so that the Validation set is on the same scale.
Because the Training Set changes based on which set is held out for validation, each of the five
pairs of Training and Validation Sets will have different centering and standardization
parameters.
Deliverable 2: Illustrate the effect of the tuning parameters on the cross validation error by
generating a plot of six lines (one for each πΌ value) with the π¦-axis as CV(5) error, and the π₯-
axis the corresponding log-scaled tuning parameter value log10(π) that generated the
particular CV(5) error. Label both axes in the plot. Without the log scaling of the tuning
parameter π, the plots will look distorted.
Deliverable 3: Indicate the pair of values π and πΌ that generated the smallest CV(5) error.
Deliverable 4: Given the optimal π and πΌ pair, retrain your model on the entire dataset of
π = 400 observations and provide the estimates of the π = 9 best-fit model parameters.
How do these estimates compare to the estimates obtained from ridge regression (πΌ = 1
under optimal π for πΌ = 1) and lasso (πΌ = 0 under optimal π for πΌ = 0) on the entire
dataset of π = 400 observations?
6
Deliverable 5: Provide all your source code that you wrote from scratch to perform all analyses
(aside from plotting scripts, which you do not need to turn in) in this assignment, along with
instructions on how to compile and run your code.
Deliverable 6 (extra credit): Implement the assignment using statistical or machine learning
libraries in a language of your choice. Compare the results with those obtained above, and
provide a discussion as to why you believe your results are different if you found them to be
different. This is worth up to 10\% additional credit, which would allow you to get up to 110\%
out of 100 for this assignment.
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