Causal Inference provides students with the tools for understanding causation, i.e., the relationship between cause and effect. We will start with the situation in which you are able to design and implement the data gathering process, called the experiment. We will then define causation, identify preconditions required for A to cause B, show how to design perfect experiments, and discuss how to understand threats to the validity of less-than-perfect experiments. In this course, we will cover experimental design and then turn to those careful approaches, where we will consider such approaches as quasi-experiments, regression discontinuities, differences in differences, and contemporary advanced approaches.
Data Science (Undergraduate)
4 credits – 15 Weeks
Sections (Spring 2020)
DS-UA 201-000 (20565)01/27/2020 – 05/11/2020 Wed,Fri2:00 PM – 3:00 PM (Early afternoon)at Washington SquareInstructed by Strezhnev, Anton
DS-UA 201-000 (20567)01/27/2020 – 05/11/2020 Mon2:00 PM – 2:00 PM (Early afternoon)at Washington SquareInstructed by
DS-UA 201-000 (20568)01/27/2020 – 05/11/2020 Wed11:00 AM – 11:00 AM (Morning)at Washington SquareInstructed by