## STATS 32: Introduction to R for Undergraduates

This short course runs for weeks two through five of the quarter. It is recommended for undergraduate students who want to use R in the humanities or social sciences and for students who want to learn the basics of R programming. The goal of the short course is to familiarize students with R's tools for data analysis. Lectures will be interactive with a focus on learning by example, and assignments will be application-driven. No prior programming experience is needed. Topics covered include basic data structures, File I/O, data transformation and visualization, simple statistical tests, etc, and some useful packages in R. Prerequisite: undergraduate student. Priority given to non-engineering students. Laptops necessary for use in class.

Terms: Aut
| Units: 1

Instructors:
Tay, J. (PI)

## STATS 60: Introduction to Statistical Methods: Precalculus (PSYCH 10, STATS 160)

Techniques for organizing data, computing, and interpreting measures of central tendency, variability, and association. Estimation, confidence intervals, tests of hypotheses, t-tests, correlation, and regression. Possible topics: analysis of variance and chi-square tests, computer statistical packages.

Terms: Aut, Win, Spr, Sum
| Units: 5
| UG Reqs: GER:DB-Math, WAY-AQR, WAY-FR

Instructors:
Baiocchi, M. (PI)
;
Blevins, E. (PI)
;
Harrison, M. (PI)
...
more instructors for STATS 60 »

Instructors:
Baiocchi, M. (PI)
;
Blevins, E. (PI)
;
Harrison, M. (PI)
;
Hsu, T. (PI)
;
King, L. (PI)
;
Miolane, N. (PI)
;
Poldrack, R. (PI)
;
Schwartz, J. (PI)
;
Tong, L. (PI)
;
Xia, L. (PI)
;
bonnen, t. (PI)
;
Azadkia, M. (TA)
;
Cao, S. (TA)
;
Guo, K. (TA)
;
Han, K. (TA)
;
Lemhadri, I. (TA)
;
Rajanala, S. (TA)
;
Ruan, F. (TA)
;
Wu, Y. (TA)

## STATS 101: Data Science 101

http://web.stanford.edu/class/stats101/ . This course will provide a hands-on introduction to statistics and data science. Students will engage with the fundamental ideas in inferential and computational thinking. Each week, we will explore a core topic comprising three lectures and two labs (a module), in which students will manipulate real-world data and learn about statistical and computational tools. Students will engage in statistical computing and visualization with current data analytic software (Jupyter, R). The objectives of this course are to have students (1) be able to connect data to underlying phenomena and to think critically about conclusions drawn from data analysis, and (2) be knowledgeable about programming abstractions so that they can later design their own computational inferential procedures. No programming or statistical background is assumed. Freshmen and sophomores interested in data science, computing and statistics are encouraged to attend. Open to graduates as well.

Terms: Aut, Spr
| Units: 5
| UG Reqs: GER: DB-NatSci, WAY-AQR

Instructors:
Duchi, J. (PI)
;
Johndrow, J. (PI)
;
Walther, G. (PI)
...
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Instructors:
Duchi, J. (PI)
;
Johndrow, J. (PI)
;
Walther, G. (PI)
;
Bhattacharya, S. (TA)
;
Ghosh, S. (TA)
;
Gupta, S. (TA)
;
Kluger, D. (TA)
;
Xu, H. (TA)

## STATS 110: Statistical Methods in Engineering and the Physical Sciences

Introduction to statistics for engineers and physical scientists. Topics: descriptive statistics, probability, interval estimation, tests of hypotheses, nonparametric methods, linear regression, analysis of variance, elementary experimental design. Prerequisite: one year of calculus.

Terms: Aut, Sum
| Units: 5
| UG Reqs: GER:DB-Math, WAY-AQR, WAY-FR

Instructors:
Miolane, N. (PI)
;
Mukhopadhyay, S. (PI)
;
Bhattacharya, S. (TA)
...
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Instructors:
Miolane, N. (PI)
;
Mukhopadhyay, S. (PI)
;
Bhattacharya, S. (TA)
;
Seiler, B. (TA)
;
Sohn, Y. (TA)
;
Tuzhilina, E. (TA)

## STATS 116: Theory of Probability

Probability spaces as models for phenomena with statistical regularity. Discrete spaces (binomial, hypergeometric, Poisson). Continuous spaces (normal, exponential) and densities. Random variables, expectation, independence, conditional probability. Introduction to the laws of large numbers and central limit theorem. Prerequisites:
MATH 52 and familiarity with infinite series, or equivalent.

Terms: Aut, Spr, Sum
| Units: 4-5
| UG Reqs: GER:DB-Math, WAY-AQR, WAY-FR

Instructors:
Kaluwa Devage, P. (PI)
;
Mohanty, P. (PI)
;
Siegmund, D. (PI)
...
more instructors for STATS 116 »

Instructors:
Kaluwa Devage, P. (PI)
;
Mohanty, P. (PI)
;
Siegmund, D. (PI)
;
Zhu, X. (PI)
;
Bhattacharya, S. (TA)
;
Bi, N. (TA)
;
Cao, S. (TA)
;
Li, S. (TA)
;
Misiakiewicz, T. (TA)
;
SUR, P. (TA)
;
Wu, H. (TA)
;
Xu, H. (TA)

## STATS 141: Biostatistics (BIO 141)

Introductory statistical methods for biological data: describing data (numerical and graphical summaries); introduction to probability; and statistical inference (hypothesis tests and confidence intervals). Intermediate statistical methods: comparing groups (analysis of variance); analyzing associations (linear and logistic regression); and methods for categorical data (contingency tables and odds ratio). Course content integrated with statistical computing in R.

Terms: Aut
| Units: 3-5
| UG Reqs: GER:DB-Math, WAY-AQR

Instructors:
Siegmund, D. (PI)
;
Hamidi, N. (TA)
;
Patterson, E. (TA)
...
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## STATS 155: Statistical Methods in Computational Genetics

The computational methods necessary for the construction and evaluation of sequence alignments and phylogenies built from molecular data and genetic data such as micro-arrays and data base searches. How to formulate biological problems in an algorithmic decomposed form, and building blocks common to many problems such as Markovian models, multivariate analyses. Some software covered in labs (Python, Biopython, XGobi, MrBayes, HMMER, Probe). Prerequisites: knowledge of probability equivalent to
STATS 116,
STATS 202 and one class in computing at the
CS 106 level. Writing intensive course for undergraduates only. Instructor consent required. (WIM)

Terms: Aut
| Units: 3

Instructors:
Holmes, S. (PI)

## STATS 160: Introduction to Statistical Methods: Precalculus (PSYCH 10, STATS 60)

Techniques for organizing data, computing, and interpreting measures of central tendency, variability, and association. Estimation, confidence intervals, tests of hypotheses, t-tests, correlation, and regression. Possible topics: analysis of variance and chi-square tests, computer statistical packages.

Terms: Aut, Win, Spr, Sum
| Units: 5

Instructors:
Baiocchi, M. (PI)
;
Blevins, E. (PI)
;
Harrison, M. (PI)
...
more instructors for STATS 160 »

Instructors:
Baiocchi, M. (PI)
;
Blevins, E. (PI)
;
Harrison, M. (PI)
;
Hsu, T. (PI)
;
King, L. (PI)
;
Miolane, N. (PI)
;
Poldrack, R. (PI)
;
Schwartz, J. (PI)
;
Tong, L. (PI)
;
Xia, L. (PI)
;
bonnen, t. (PI)
;
Azadkia, M. (TA)
;
Cao, S. (TA)
;
Guo, K. (TA)
;
Han, K. (TA)
;
Lemhadri, I. (TA)
;
Rajanala, S. (TA)
;
Ruan, F. (TA)
;
Wu, Y. (TA)

## STATS 195: Introduction to R (CME 195)

This short course runs for four weeks and is offered in fall and spring. It is recommended for students who want to use R in statistics, science or engineering courses, and for students who want to learn the basics of data science with R. The goal of the short course is to familiarize students with some of the most important R tools for data analysis. Lectures will focus on learning by example and assignments will be application-driven. No prior programming experience is assumed.

Terms: Aut, Spr
| Units: 1

Instructors:
Nguyen, L. (PI)
;
Rosenman, E. (PI)

## STATS 199: Independent Study

For undergraduates.

Terms: Aut, Win, Spr, Sum
| Units: 1-15
| Repeatable for credit

Instructors:
Baiocchi, M. (PI)
;
Duchi, J. (PI)
;
Efron, B. (PI)
...
more instructors for STATS 199 »

Instructors:
Baiocchi, M. (PI)
;
Duchi, J. (PI)
;
Efron, B. (PI)
;
Mohanty, P. (PI)
;
Rogosa, D. (PI)
;
Sabatti, C. (PI)
;
Taylor, J. (PI)
;
Wager, S. (PI)