CSE 544, Spring 2024: Probability & Statistics for Data Science

News:
01/09: Piazza course sign-up link
01/09: Welcome to CSE 544! We will have our first lecture in Staller Center M0113 on Jan 23rd (Tuesday) at 11:30am

CSE 544: Probability & Statistics for Data Science
Spring 2024


When: Tu Th, 11:30am - 12:50pm
Where: Staller Center M0113

Instructor: Anshul Gandhi
Instructor Office Hours: Tu 2:30-3:30pm and Th 1-2pm (NCS 347)

TA Office Hours: Wed 5-6pm (NCS 336)

Course Description

The course will cover core concepts of probability theory and an assortment of standard statistical techniques. Specific topics will include random variables and distributions, quantitative research methods (correlation and regression), and modern techniques of optimization and matching learning (clustering and prediction).

More informally, this 3-credit, grad-level course covers probability and statistics topics required for data scientists to analyze and interpret data. The course is also part of the Data Science and Engineering Specialization. The course is targeted primarily at PhD and Masters students in the Computer Science Department. Topics covered include Probability Theory, Random Variables, Stochastic Processes, Statistical Inference, Hypothesis Testing, Regression, and Time Series Analysis. For more details, refer to the syllabus below.

The class is in-person, and is expected to be interactive and students are encouraged to participate in class discussions.

Grading will be on a curve, and will be based on assignments, exams, and a semester-end mini data analysis project. For more details, see the section on grading below.

Prerequisites: There are no formal prerequisites, but comfort in probability theory and proficiency with Python (since programming assignments tasks will be in Python) will be helpful.

Learning Objectives: Students taking this course will learn the necessary probability and statistical techniques and skills required for data scientists and quantitative analysts. At the completion of the course, students will be able to answer questions such as "what distribution does the data follow?", "how to estimate the parameters of a data distribution?", "do the two data populations come from the same distribution?". Additionally, students will be able to provide a measure of confidence or statistical significance when answering these questions. Finally, students will be able to implement techniques that answer the above questions using Python programming.

Syllabus & Schedule

Date Topic Readings Notes
Jan 23 (Tu)
[Lec 01]
Course introduction, class logistics
Jan 25 (Th)
[Lec 02]
Probability review - 1
  • Basics: sample space, outcomes, probability
  • Events: mutually exclusive, independent
  • Calculating probability: sets, counting, tree diagram
  • AoS 1.1 - 1.5
    MHB 3.1 - 3.4
    Jan 30 (Tu)
    [Lec 03]
    Probability review - 2
  • Conditional probability
  • Law of total probability
  • Bayes' theorem
  • AoS 1.6, 1.7
    MHB 3.3 - 3.6
    assignment 1 out, due Feb 8
    Feb 01 (Th)
    [Lec 04]
    Random variables - 1: Overview and Discrete RVs
  • Discrete and Continuous RVs
  • Mean, Moments, Variance
  • pmf, pdf, cdf
  • Discrete RVs: Bernoulli, Binomial, Geometric, Indicator
  • AoS 2.1 - 2.3, 3.1 - 3.4
    MHB 3.7 - 3.9
    Feb 06 (Tu)
    [Lec 05]
    Random variables - 2: Continuous RVs
  • Uniform(a, b)
  • Exponential(λ)
  • Normal(μ, σ2), and its several properties
  • AoS 2.4, 3.1 - 3.4
    MHB 3.7 - 3.9, 3.14.1
    Python scripts:
    draw_Bernoulli, draw_Binomial, draw_Geometric,
    draw_Uniform, draw_Exponential, draw_Normal
    Feb 08 (Th)
    [Lec 06]
    Random variables - 3: Joint distributions & conditioning
  • Joint probability distribution
  • Linearity of expectation
  • AoS 2.5 - 2.8
    MHB 3.10 - 3.13, 3.15
    assignment 2 out, due Feb 22
    Feb 13 (Tu)
    No class Snow day
    Feb 15 (Th)
    [Lec 07]
    Random variables - 4: Joint distributions & conditioning
  • Independent random variables
  • Product of expectation
  • Conditional expectation
  • AoS 2.5 - 2.8
    MHB 3.10 - 3.13, 3.15
    Feb 20 (Tu)
    [Lec 08]
    Probability Inequalities
  • Weak Law of Large Numbers
  • Central Limit Theorem
  • AoS 5.3, 5.4
    MHB 3.14.2, 5.2
    Feb 22 (Th)
    [Lec 09]
    Non-parametric inference - 1
  • Basics of inference
  • Simple examples
  • Empirical PMF
  • Sample mean
  • bias, se, MSE
  • AoS 6.1 - 6.2, 6.3.1 assignment 3 out, due March 3
    Required A3 data: a3_data.zip
    Feb 27 (Tu)
    [Lec 10]
    Non-parametric inference - 2
  • Empirical Distribution Function (or eCDF)
  • Kernel Density Estimation (KDE)
  • Statistical Functionals
  • Plug-in estimator
  • AoS 7.1 - 7.2 Python scripts:
    sample_Bernoulli, sample_Binomial, sample_Geometric,
    sample_Uniform, sample_Exponential, sample_Normal, draw_eCDF
    Feb 29 (Th)
    [Lec 11]
    Non-parametric inference - 3
  • Percentiles, quantiles
  • Normal-based confidence intervals
  • DKW inequality
  • Bootstrapping
  • AoS 6.3.2, 7.1, 8 - 8.3
    Mar 05 (Tu)
    M1 review
    Mar 07 (Th) Mid-term 1 In-class
    Mar 12 (Tu) No class Spring Break
    Mar 14 (Th) No class Spring Break
    Mar 19 (Tu)
    [Lec 12]
    Parametric inference - 1
  • Consistency, Asymptotic Normality
  • Basics of parametric inference
  • Method of Moments Estimator (MME)
  • AoS 6.3.1 - 6.3.2, 9.1 - 9.2 assignment 4 out, due April 1
    Required data: penguin dataset, q6_a.csv, q6_b_X.csv, q6_b_Y.csv
    Mar 21 (Th)
    [Lec 13]
    Parametric inference - 2
  • Properties of MME
  • Basics of MLE
  • Maximum Likelihood Estimator (MLE)
  • Properties of MLE
  • AoS 9.3, 9.4, 9.6
    Mar 26 (Tu)
    [Lec 14]
    Hypothesis testing - 1
  • Basics of hypothesis testing
  • Wald test
  • AoS 10 - 10.1
    DSD 5.3.1
    Mar 28 (Th)
    [Lec 15]
    Hypothesis testing - 2
  • Type I and Type II errors
  • Wald test
  • AoS 10 - 10.1
    DSD 5.3.1
    Apr 02 (Tu)
    [Lec 16]
    Hypothesis testing - 3
  • Z-test
  • t-test
  • AoS 10.10.2
    DSD 5.3.2
    assignment 5 out, due April 15
    Required data: a5_q5
    Apr 04 (Th)
    [Lec 17]
    Hypothesis testing - 4
  • Kolmogorov-Smirnov test (KS test)
  • p-values
  • Permutation test
  • AoS 15.4, 10.2, 10.5
    DSD 5.3.3, 5.5
    Apr 09 (Tu)
    [Lec 18]
    Hypothesis testing - 5
  • Pearson correlation coefficient
  • Chi-square test for independence
  • AoS 3.3, 10.3 - 10.4
    DSD 2.3
    Apr 11 (Th)
    [Lec 19]
    Bayesian inference - 1
  • Bayesian reasoning
  • Bayesian inference
  • AoS 11.1 - 11.2, 11.6
    DSD 5.6
    Example plots
    Apr 16 (Tu)
    [Lec 20]
    Bayesian inference - 2
  • Priors
  • Conjugate priors
  • AoS 11.1 - 11.2, 11.6
    DSD 5.6
    assignment 6 out, due April 28
    Required data: q2.dat, traffic.csv, q5.csv
    Apr 18 (Th)
    [Lec 21]
    Regression - 1
  • Basics of Regression
  • Simple Linear Regression
  • AoS 13.1, 13.3 - 13.4
    DSD 9.1
    Apr 23 (Tu)
    [Lec 22]
    Regression - 2
  • Multiple Linear Regression
  • AoS 13.5
    DSD 9.1
    Apr 25 (Th)
    [Lec 23]
    Time Series Analysis
  • EWMA Time Series modeling
  • AR Time Series modeling
  • Apr 30 (Tu) M2 review
    May 02 (Th) Mid-term 2 In-class

    Resources

    Grading (tentative)

  • Important:
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