Spring 2023
STAT C241B 001 - LEC 001
Advanced Topics in Learning and Decision Making
A Guided Tour of Key Statistical Methods and Analysis Tools
Ryan Tibshirani
Class #:27077
Units: 3
Instruction Mode:
In-Person Instruction
Offered through
Statistics
Current Enrollment
Total Open Seats:
22
Enrolled: 28
Waitlisted: 0
Capacity: 50
Waitlist Max: 15
No Reserved Seats
Also offered as:
COMPSCI C281B
Hours & Workload
3 hours of instructor presentation of course materials per week, and 6 hours of outside work hours per week.
Other classes by Ryan Tibshirani
Course Catalog Description
Recent topics include: Graphical models and approximate inference algorithms. Markov chain Monte Carlo, mean field and probability propagation methods. Model selection and stochastic realization. Bayesian information theoretic and structural risk minimization approaches. Markov decision processes and partially observable Markov decision processes. Reinforcement learning.
Class Description
We will take a guided tour of both basic and advanced methods in statistical machine learning, and the accompanying analysis tools that enable us to understand them theoretically. Theorems are presented together with practical aspects of methodology and intuition to help students develop a broad sense of the rationale (pros and cons) behind choosing to use a given method/approach in particular problem settings. Topics to be covered will most likely include: high-dimensional estimation, nonparametric regression and testing, overparametrization and interpolation, model selection, predictive inference, and distribution-free uncertainty quantification.
Rules & Requirements
Repeat Rules
Course is not repeatable for credit.
Reserved Seats
Current Enrollment
No Reserved Seats
Textbooks & Materials
See class syllabus or https://calstudentstore.berkeley.edu/textbooks for the most current information.
Guide to Open, Free, & Affordable Course Materials
Associated Sections
None