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MACHINE LEARNING FOR ECONOMISTS

ECON 725
课程描述

Introduction to the use of Machine Learning (ML) in economic analysis. Covers basic techniques of ML, much attention will be devoted to evaluating the use of these tools in economics. Learn how economists are integrating the tools of ML with econometric techniques in current empirical research. Gain hands on experience in using these techniques to answer traditional questions of interest to economists. Topics include (i) an in-depth discussion of the differences and similarities in goals, empirical settings and tools between ML and econometrics, (ii) supervised learning methods for regression and classification, unsupervised learning methods, large data analysis and data mining, (iii) recent methods at the intersection of ML and econometrics, designed for causal inference, optimal policy estimation, estimation of counterfactual effects. The methods are taught with an emphasis on practical application.

先修课程

Declared in an Economics graduate program

满足要求
学分

未报告

开课时间

未报告

平均绩点
3.3

-6.91% 相比历史数据

完成率
100%

与历史数据相比无变化

A率
19.3%

-47.92% 相比历史数据

班级规模
57

15.74% 相比历史数据

Cumulative Grade Distribution

教师 (2026 Summr)

按评分排序,数据来自 Rate My Professors

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