PUBPOL 5390
Last Updated
- Schedule of Classes - April 13, 2026 10:10AM EDT
Classes
PUBPOL 5390
Course Description
Course information provided by the 2026-2027 Catalog.
This course is designed for students interested in learning the foundations of machine learning. Our focus will be on applying these techniques to applications in specific policy related scenarios. We will cover the intuition of the theoretical underpinnings, with a focus on practical use of supervised learning tools. (MPA-DA, MPA-DATSCI)
Prerequisites PUPPOL 5301 and PUBPOL 5302 (or equivalent).
Program Requirements (MPA-DA, MPA-DATSCI)
Last 4 Terms Offered 2025FA
Learning Outcomes
- Describe the approaches and algorithms for various machine learning techniques.
- Understand the core concepts that guide machine learning approaches.
- Use Statistical programs (e.g. Stata, Python, R) to implement supervised learning techniques on actual data, and correctly use and interpret the results.
- Assess challenges in the use of ML techniques in Public Policy contexts.
Regular Academic Session. Combined with: PUBPOL 4390
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Credits and Grading Basis
3 Credits Stdnt Opt(Letter or S/U grades)
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Class Number & Section Details
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Meeting Pattern
- TR
- Aug 24 - Dec 7, 2026
Instructors
Miller, D
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Additional Information
Instruction Mode: In Person
Enrollment limited to: Graduate and professional students.
Seats are reserved for Brooks School residential master's students until the start of the fall semester.
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