STAT 238a / STAT 538a Probability and Statistics

Professor: 
Day / time: 
Tuesday, Thursday 1:00pm - 2:15pm
Classroom: 
Mason Laboratory, Rm 211
Undergraduate
Graduate
Course term: 
Fall

Fundamental principles and techniques of probabilistic thinking, statistical modeling, and data analysis. Essentials of probability, including conditional probability, random variables, distributions, law of large numbers, central limit theorem, and 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 for calculations, simulations, and analysis of data.

After MATH 118 or 120.