Spring 2026 Data Science for Policy IA7100 section R01

Applying Machine Learning

Call Number 15578
Day & Time
Location
F 1:10pm-3:00pm
To be announced
Points 0
Grading Mode Standard
Approvals Required None
Type SEMINAR
Method of Instruction In-Person
Course Description

The widespread adoption of information technology has resulted in the generation of vast amounts of data on human behavior. This course explores ways to use this data to better understand and improve the societies in which we live. The course weaves together methods from machine learning (OLS, LASSO, trees) and social science (theory, reduced-form causal inference, structural modeling) to address real-world problems. We will use these problems as a backdrop to weigh the importance of causality, precision, and computational efficiency.

Prerequisites: Students are expected to have completed coursework equivalent to Quantitative Analysis II or Statistics (e.g., SIPA U6501), Microeconomics (e.g., SIPA U6300/50 or U6400), and an introductory Computer Science course (e.g., INAF U6006). Familiarity with econometrics and programming is assumed. 

Web Site Vergil
Department Data Science for Policy
Enrollment 0 students as of 5:06PM Saturday, November 8, 2025
Status Full
Subject Data Science for Policy
Number IA7100
Section R01
Division School of International and Public Affairs
Open To SIPA
Note Recitation
Section key 20261DSPC7100UR01