Statistics Department
Courselist for Fall 2010/Spring 2011

Courses whose numbers end with a are offered in the FALL;
courses whose numbers end with ab are offered in both semesters;
courses whose numbers end with b are offered in the SPRING;
courses with a gray background are not taught this year.
CourseNumberInstructorTimeRoom
Introduction to Statistics 101a-106a/501a-506a Jonathan Reuning-Scherer and Staff Tues, Thurs 1:00-2:15 OML 202
Probability and Statistics 238a/538a Joseph Chang Mon, Wed, Fri 2:30-3:20 ML 211
Probability Theory with Applications 241a/541a/MATH 241a Mokshay Madiman Mon, Wed, Fri 9:25-10:15 WLH 208
Linear Models 312a/612a David Pollard Mon, Fri 11:35-12:50 24 Hillhouse, Room 107
Data analysis 361a/661a Jing Zhang Mon, Wed 2:30-3:45 Stat Lab 140 Prospect Street
Statistical Inference 610a Mokshay Madiman Tues, Thurs 10:30-11:45 24 Hillhouse, Room 107
Asymptotics 618a David Pollard Tue, Thurs 10:30-11:45 24 Hillhouse basement
Statistical Case Studies 625a Michael Kane Tues, Thurs 1:00-2:15 24 Hillhouse, Room 107
Statistical Consulting 627ab John Hartigan (Fall); Jay Emerson (Spring) Friday 2:30-4:30 24 Hillhouse, Room 107
Independent Study 690ab Staff - -
Research Seminar in Statistics 699ab Sekhar Tatikonda and David Pollard Wednesday 1:00-3:00 24 Hillhouse, basement
Departmental Seminar 700ab - Monday 4:15-5:30 24 Hillhouse Avenue, room 107
Introductory Statistics 100b/500b Andrew Barron Mon, Wed, Fri 10:30-11:20 Davies Auditorium
Introductory Data Analysis 230b/530a/PLSC 530b John Emerson Mon, Wed 2:30-3:45 ML 211
Theory of Statistics 242b/542b Lisha Chen Mon, Wed, Fri 9:25-10:15 ML 211
Stochastic Processes 251b/551b Joseph Chang Mon, Wed 1:00-2:15 WLH 116
Advanced Probability 330b/600b/MATH 330b David Pollard Tues, Thurs 2:30-3:45 24 Hillhouse
Multivariate Statistics for Social Sciences 363b/660b Jonathan Reuning-Scherer Tues, Thurs 1:00-2:15 WLH 119
Information theory 364b/664b Andrew Barron Tues, Thurs 9:00-10:15 24 Hillhouse
Data Mining and Machine Learning 365b/665b Lisha Chen Mon, Wed 11:35-12:50 24 Hillhouse
Statistics Senior Seminar Project 490b Andrew Barron - -
Probabilistic Convex Geometry 604b Mokshay Madiman and Richard Vitale Wednesday 4:00-6:30 24 Hillhouse
Experimental Design 613b Jonathan Reuning-Scherer Mon 1:00-3:50 KRN 321
Practical Work 626b Staff - -
Statistical Methods in Genetics and Bioinformatics 645b Jing Zhang Tues, Thurs 10:30-11:45 24 Hillhouse, Room 107
Statistical Computing 662b John Emerson Tuesday 4:00-6:30 24 Hillhouse
Optimization and Convexity AMTH 237a/AMTH 537a - not taught this year-
Theory of Statistics 542a - not taught this year-
Probabilistic Networks, Algorithms, and Applications 667a - not taught this year-
Real-World Statistics 128b - not taught this year-
Advanced Stochastic Processes 603b - not taught this year-

Introductory Statistics (STAT 100b/STAT 500b)
Instructor: Andrew Barron
Time: Mon, Wed, Fri 10:30-11:20
Place: Davies Auditorium
An introduction to statistical reasoning. Topics include numerical and graphical summaries of data, data acquisition and experimental design, probability, hypothesis testing, confidence intervals, correlation and regression. Application of statistical concepts to data; analysis of real-world problems.
Extra: Problem session,  Mon 7:00-8:00,  24 Hillhouse Room 107
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Introduction to Statistics (STAT 101a-106a/STAT 501a-506a)
Instructor: Jonathan Reuning-Scherer and Staff
Time: Tues, Thurs 1:00-2:15
Place: OML 202
Webpage:  http://www.stat.yale.edu/Courses/QR/stat101106.html
Statistics is the science and art of prediction and explanation. In most fields of study research relies on statistical analysis of data. Each of these courses, led by an expert from the field of study, introduces statistical reasoning and emphasizes how Statistics is applied to the particular discipline. Topics include numerical and graphical summaries of data, data acquisition and experimental design, probability, hypothesis testing, confidence intervals, correlation and regression. Students will learn to apply statistical concepts to data using Minitab and reach conclusions about real-world problems.

Each course focuses on applications to a particular field of study and is taught jointly by two instructors, one specializing in statistics and the other in the discipline particular to the course (Life Sciences for Stat 101, Political Science for Stat 102, and so on). The courses meet together for the first seven weeks and separately for the final six weeks. The first part of the course is taught by Jonathan Reuning-Scherer and covers fundamentals of probability and statistics. Periodic examples are provided by individual course instructors. The courses separate by area of specialty for the final six weeks.
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Introduction to Statistics: Life Sciences (STAT 101a/E&EB 210aG/MCDB 215a)
Instructor: Jonathan Reuning-Scherer and Günter Wagner
Time: Tues, Thurs 1:00-2:15
Place: -
Statistical and probabilistic analysis of biological problems presented with a unified foundation in basic statistical theory. Problems are drawn from genetics, ecology, epidemiology, and bioinformatics.
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Introduction to Statistics: Political Science (STAT 102a/EP&E 203a/PLSC 425a)
Instructor: Jonathan Reuning-Scherer and David Doherty
Time: Tues, Thurs 1:00-2:15
Place: -
Statistical analysis of politics and quantitative assessments of public policies. Problems presented with reference to a wide array of examples: public opinion, campaign finance, racially motivated crime, and health policy.
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Introduction to Statistics: Social Sciences (STAT 103a/SOCY 119a)
Instructor: Jonathan Reuning-Scherer
Time: Tues, Thurs 1:00-2:15
Place: -
Descriptive and inferential statistics applied to analysis of data from the social sciences. Introduction of concepts and skills for understanding and conducting quantitative research.
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Introduction to Statistics: Medicine (STAT 105a)
Instructor: Jonathan Reuning-Scherer and David Salsburg
Time: Tues, Thurs 1:00-2:15
Place: -
Statistical methods relied upon in medicine and medical research. Practice in reading medical literature competently and critically, as well as practical experience performing statistical analysis of medical data.
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[ Introduction to Statistics: Data Analysis (STAT 106a) ]

[ Real-World Statistics (STAT 128b) ]

Introductory Data Analysis (STAT 230b/STAT 530a/PLSC 530b)
Instructor: John Emerson
Time: Mon, Wed 2:30-3:45
Place: ML 211
Survey of statistical methods: plots, transformations, regression, analysis of variance, clustering, principal components, contingency tables, and time series analysis. Uses R and Web data sources. After or concurrent with Statistics 101-105.
Extra: Session for 530,  Friday 1:00-2:00,  24 Hillhouse Room 107
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[ Optimization and Convexity (AMTH 237a/AMTH 537a) ]

Probability and Statistics (STAT 238a/STAT 538a)
Instructor: Joseph Chang
Time: Mon, Wed, Fri 2:30-3:20
Place:  ML 211
Fundamental principles and techniques that help scientists think probabilistically, develop statistical models, and analyze data. Essentials of probability: conditional probability, random variables, distributions, law of large numbers, central limit theorem, Markov chains. Statistical inference with emphasis on the Bayesian approach: parameter estimation, likelihood, prior and posterior distributions, Bayesian inference using Markov chain Monte Carlo. Introduction to regression and linear models. Computers are used throughout for calculations, simulations, and analysis of data. After MATH 118a or b or 120a or b. Some acquaintance with matrix algebra and computing assumed.
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Probability Theory with Applications (STAT 241a/STAT 541a/MATH 241a)
Instructor: Mokshay Madiman
Time: Mon, Wed, Fri 9:25-10:15
Place: WLH 208
A first course in probability theory: probability spaces, random variables, expectations and probabilities, conditional probability, independence, some discrete and continuous distributions, central limit theorem, law of large numbers. After or concurrent with Mathematics 120a or b or equivalents.
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[ Theory of Statistics (STAT 542a) ]

Theory of Statistics (STAT 242b/542b)
Instructor: Lisha Chen
Time: Mon, Wed, Fri 9:25-10:15
Place: ML 211
Principles of statistical analysis: maximum likelihood, sampling distributions, estimation, confidence intervals, tests of significance, regression, analysis of variance, and the method of least squares. After Statistics 241a; after or concurrent with Mathematics 222.
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Stochastic Processes (STAT 251b/STAT 551b)
Instructor: Joseph Chang
Time:  Mon, Wed 1:00-2:15
Place: WLH 116
Introduction to the study of random processes, including Markov chains, Markov random fields, martingales, random walks, Brownian motion and diffusions. Techniques in probability, such as coupling and large deviations. Applications to image reconstruction, Bayesian statistics, finance, probabilistic analysis of algorithms, genetics and evolution. After Statistics 241a or equivalent.
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Linear Models (STAT 312a/STAT 612a)
Instructor: David Pollard
Time: Mon, Fri 11:35-12:50
Place: 24 Hillhouse, Room 107
Webpage:  http://www.stat.yale.edu/~pollard/Courses/312.fall2010/
The geometry of least squares; distribution theory for normal errors; regression, analysis of variance, and designed experiments; numerical algorithms (with particular reference to the R statistical language). Linear algebra and some acquaintance with statistics assumed.
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Advanced Probability (STAT 330b/STAT 600b/MATH 330b)
Instructor: David Pollard
Time: Tues, Thurs 2:30-3:45
Place: 24 Hillhouse
Webpage:  http://www.stat.yale.edu/~pollard/Courses/600.spring2011/
Measure theoretic probability, conditioning, laws of large numbers, convergence in distribution, characteristic functions, central limit theorems, martingales. Some knowledge of real analysis is assumed.
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Data analysis (STAT 361a/STAT 661a)
Instructor: Jing Zhang
Time: Mon, Wed 2:30-3:45
Place: Stat Lab 140 Prospect Street
Through analysis of data sets using the R statistical computing language, study of a selection of statistical topics such as linear and nonlinear models, maximum likelihood, resampling methods, curve estimation, model selection, classification and clustering. After Statistics 242 and Mathematics 222b or 225a or b, or equivalents.
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Multivariate Statistics for Social Sciences (STAT 363b/STAT 660b)
Instructor: Jonathan Reuning-Scherer
Time: Tues, Thurs 1:00-2:15
Place: WLH 119
A practical introduction to the analysis of multivariate data as applied to examples from the social sciences. Topics to include multivariate analysis of variance (MANOVA), principle components analysis, cluster analysis (hierarchical clustering, k-means), canonical correlation, multidimensional scaling, factor analysis, discriminant analysis, and structural equations modeling. Emphasis is placed on practical application of multivariate techniques to a variety of examples in the social sciences. There are regular homework assignments and a final project. Regular use of some statistical software package (students may choose among SAS, SPSS, and MINITAB). A complete syllabus will be available on the classes server.
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Information theory (STAT 364b/STAT 664b)
Instructor: Andrew Barron
Time: Tues, Thurs 9:00-10:15
Place: 24 Hillhouse
Foundations of information theory in mathematical communications, statistical inference, statistical mechanics, probability, and algorithmic complexity. Quantities of information and their properties: entropy, conditional entropy, divergence, redundancy, mutual information, channel capacity. Basic theorems of data compression, data summarization, and channel coding. Applications in statistics and finance. After Statistics 241.
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Data Mining and Machine Learning (STAT 365b/STAT 665b)
Instructor: Lisha Chen
Time: Mon, Wed 11:35-12:50
Place: 24 Hillhouse
Techniques for data mining and machine learning are covered from both a statistical and a computational perspective, including support vector machines, bagging, boosting, neural networks, and other nonlinear and nonparametric regression methods. The course will give the basic ideas and intuition behind these methods, a more formal understanding of how and why they work, and opportunities to experiment with machine learning algorithms and apply them to data. After STAT 242b.
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Statistics Senior Seminar Project (490b)
Instructor: Andrew Barron
Time: -
Place: -
Under the supervision of a member of the faculty, each student works on an independent project. Students participate in seminar meetings at which they speak on the progress of their projects.
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[ Advanced Stochastic Processes (STAT 603b) ]

Probabilistic Convex Geometry (STAT 604b)
Instructor: Mokshay Madiman and Richard Vitale
Time: Wednesday 4:00-6:30
Place: 24 Hillhouse
A variety of interconnected topics from probability, functional analysis, the theory of convex sets in Euclidean spaces, and statistics. Prerequisites: Some mathematical maturity (basic real and functional analysis, Lp-spaces, etc.), measure-theoretic probability (up to and including the definition of Brownian motion), as well as basic statistical inference.
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Statistical Inference (STAT 610a)
Instructor: Mokshay Madiman
Time: Tues, Thurs 10:30-11:45
Place: 24 Hillhouse, Room 107
A systematic development of the mathematical theory of statistical inference covering methods of estimation, hypothesis testing, and confidence intervals. An introduction to statistical decision theory. Undergraduate probability at the level of Statistics 241a assumed.
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Experimental Design (STAT 613b)
Instructor: Jonathan Reuning-Scherer
Time: Mon 1:00-3:50
Place: KRN 321
Principles of design for planned experiements, coupled with methods of analysis of experimental data. Strengths and weakness of block, split-plot, and completely randomized designs; extensive analysis of data that designs produce. Questions of sample size estimation. Prerequisite: an introductory course in statistics.
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Asymptotics (STAT 618a)
Instructor: David Pollard
Time: Tue, Thurs 10:30-11:45
Place: 24 Hillhouse basement
Webpage:  http://www.stat.yale.edu/~pollard/Courses/618.fall2010/
A careful study of some standard asymptotic techniques in statistics and econometrics, and their modern refinements. Topics selected from classical likelihood theory and M-estimation; empirical process methods; concentration inequalities; semiparametric models; local asymptotic normality; concepts of efficiency. Prerequisites: knowledge of probability at the level of STAT 600b.
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Statistical Case Studies (STAT 625a)
Instructor: Michael Kane
Time: Tues, Thurs 1:00-2:15
Place: 24 Hillhouse, Room 107
Webpage:  https://classesv2.yale.edu/
Statistical analysis of a variety of statistical problems using real data. Emphasis on methods of choosing data, acquiring data, assessing data quality, and the issues posed by extremely large data sets. Extensive computations using R.
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Practical Work (STAT 626b)
Instructor: Staff
Time: -
Place: -
Individual one-semester projects, with students working on studies outside the Department, under the guidance of a statistician. This course is a one-credit requirement for the Ph.D. degree.
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Statistical Consulting (STAT 627ab)
Instructor: John Hartigan (Fall); Jay Emerson (Spring)
Time: Friday 2:30-4:30
Place: 24 Hillhouse, Room 107
Webpage:  http://www.stat.yale.edu/~jay/627.html
Statistical consulting and collaborative research projects often require statisticians to explore new topics outside their area of expertise. This course exposes students to real problems, requiring them to draw on their expertise in probability, statistics, and data analysis. Students complete the course with individual projects supervised jointly by faculty outside the department and by one of the instructors. The course meets once a week all year, and students receive one half-credit each semester.
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Statistical Methods in Genetics and Bioinformatics (STAT 645b)
Instructor: Jing Zhang
Time: Tues, Thurs 10:30-11:45
Place: 24 Hillhouse, Room 107
Introduction to problems, algorithms and data analysis approaches in computational biology and bioinformatics; stochastic modeling and statistical methods applied to problems such as mapping disease-associated genes, analyzing gene expression microarray data, sequence alignment, SNP analysis, transcription regulation and sequence motif finding, and RNA/protein structure prediction.

Statistical methods will include maximum likelihood, EM, Bayesian inference, Markov chain Monte Carlo, and some methods of classification and clustering; models will include hidden Markov models, Bayesian networks, and the coalescent. The limitations of current models, and the future opportunities for model building, will be critically addressed. Prerequisite: STAT 361, STAT 542a or b or STAT 538a. Prior knowledge of biology is not required but some interest in the subject and a willingness to carry out calculations using R will be assumed.
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Statistical Computing (STAT 662b)
Instructor: John Emerson
Time: Tuesday 4:00-6:30
Place: 24 Hillhouse
Topics in the practice of data analysis and statistical computing, with particular attention to problems involving massive data sets or large, complex simulations and computations. Progamming with R, C/C++, and Perl, memory management, interactive and dynamic graphics, and parallel computing.
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[ Probabilistic Networks, Algorithms, and Applications (STAT 667a) ]

Independent Study (STAT 690ab)
Instructor: Staff
Time: -
Place: -
By arrangement with faculty. Approval of Director of Graduate Studies required.
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Research Seminar in Statistics (STAT 699ab)
Instructor: Sekhar Tatikonda and David Pollard
Time: Wednesday 1:00-3:00
Place: 24 Hillhouse, basement
Webpage:  http://www.stat.yale.edu/~ypng
Continuation of the Yale Probablistic Networks Group Seminar. Student and faculty explanations of current research in areas such as random graph theory, spectral graph theory, Markov chains on graphs, and the objective method.

Credit only with the explicit permission of the seminar organizers.
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Departmental Seminar (STAT 700ab)
Instructor: -
Time: Monday 4:15-5:30
Place: 24 Hillhouse Avenue, room 107
Webpage:  http://www.stat.yale.edu/Seminars/2010-11/
Important activity for all members of the department. See webpage for weekly seminar announcements.
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Revised: 12 January 2011