Course #
30545
Section Number
1
Day(s)
M
-
W
Time(s)
10:30am-11:50am
Term
Fall 2025
Course Instructor
Specialization
Data Analytics
Syllabus

The objective of this course is to train students to be insightful users of modern machine-learning methods. The class covers regularization methods for regression and classification, as well as large-scale approaches to inference and testing. In order to have greater flexibility when analyzing datasets, both frequentist and Bayesian methods are investigated. This class is required for the Data Analytic specialization but is open to all students who have taken the Harris core statistics classes (or the equivalent) and have some exposure to programming.

Notes

Students must register separately for both a lecture (PPHA 30545) and a discussion (PPHA 30547). Attendance at discussions is optional but encouraged for this course.

Course Sections

Quarter Course # Title Instructor Day(s) Time(s) Syllabus
Fall 2025 PPHA 30545/1 Machine Learning for Public Policy Chris Clapp Monday, Wednesday 10:30am-11:50am Syllabus
Fall 2025 PPHA 30545/2 Machine Learning for Public Policy Chris Clapp Monday, Wednesday 1:30pm-2:50pm Syllabus
Fall 2025 PPHA 30545/3 Machine Learning for Public Policy Jeff Levy Monday, Wednesday 1:30pm-2:50pm Syllabus
Fall 2025 PPHA 30545/4 Machine Learning for Public Policy Jeff Levy Monday, Wednesday 3:00pm-4:20pm Syllabus
Fall 2025 PPHA 30545/5 Machine Learning for Public Policy Jeff Levy Tuesday, Thursday 2:00pm-3:20pm Syllabus
Fall 2025 PPHA 30545/6 Machine Learning for Public Policy Jeff Levy Tuesday, Thursday 3:30pm-4:50pm Syllabus