Course #
30545
Day(s)
Tu
-
Th
Time(s)
10:30 AM - 11:50 AM
Term
Spring 2018
Specialization
Data Analytics
Syllabus

Must have taken PPHA 30535 Data and Programming for Public Policy I-R and PPHA 30536 Data and Programming for Public Policy II-R or obtain instructor consent to enroll. The objective of the Data Science sequence is to train students to be successful and autonomous applied economists and data scientists in government and industry. In the first two courses of the sequence, students learned programming, as well as how to handle, summarize, and visualize modern datasets. 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.

Quarter Title Instructor Day(s) Time(s) Syllabus
Winter 2024 Machine Learning - R Guillaume Pouliot Monday, Wednesday 3:00pm-4:20pm Syllabus
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