Difference in Differences – July 2022

Event Phone: 1-610-715-0115

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A 4-Day Livestream Seminar Taught by Nick Huntington-Klein, Ph.D.

This course offers an overview of difference-in-differences (DID) methodology. DID compares before/after differences for a treated group against before/after differences for a group that did not receive treatment at that time to estimate a causal effect of treatment.

Difference-in-differences can be applied in many settings, and is probably the most-used quasiexperimental design in the modern quantitative social sciences. Learning to use and evaluate DID designs is crucial for policy evaluation and understanding the applied causal inference literature. However, using DID appropriately can be tricky, and several poor practices have become common in the literature (especially in regards to rollout designs where different groups receive treatment at different times).

In this course, we will address the fundamentals of difference-in-differences methods in depth, with special attention to the many details of execution. We will also evaluate several published studies. Participants will be much more able to understand and use existing published literature on the effects of things like the minimum wage and immigration.

After this course, you will be able to:

  • understand difference-in-differences designs and when to use them
  • estimate DID models
  • evaluate the plausibility of DID assumptions
  • use popular extensions to DID, such as rollout designs
  • understand related methods like synthetic control and matrix completion

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