Call Number | 11358 |
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Day & Time Location |
F 2:10pm-4:00pm To be announced |
Points | 0 |
Grading Mode | Ungraded |
Approvals Required | None |
Type | LECTURE |
Method of Instruction | In-Person |
Course Description | The spread of information technology has led to 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 work on real world problems. We will use these problems as a backdrop to weigh the importance of causality, precision, and computational efficiency. Pre-requisites: Quantitative Analysis II, Microeconomics, and an introductory computer science course (INAF U6006 or equiv). Students who have attained mastery of the prerequisite concepts through other means may petition for an exception to the prerequisites using the form: https://bit.ly/applyingMLpetition |
Web Site | Vergil |
Department | International and Public Affairs |
Enrollment | 0 students as of 10:06AM Friday, November 15, 2024 |
Subject | International Affairs |
Number | U6503 |
Section | R02 |
Division | School of International and Public Affairs |
Note | Recitation |
Section key | 20251INAF6503UR02 |