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Heterogeneous Treatment Effects

Heterogeneous Treatment Effects

FromLinear Digressions


Heterogeneous Treatment Effects

FromLinear Digressions

ratings:
Length:
17 minutes
Released:
Jan 20, 2019
Format:
Podcast episode

Description

When data scientists use a linear regression to look for causal relationships between a treatment and an outcome, what they’re usually finding is the so-called average treatment effect. In other words, on average, here’s what the treatment does in terms of making a certain outcome more or less likely to happen. But there’s more to life than averages: sometimes the relationship works one way in some cases, and another way in other cases, such that the average isn’t giving you the whole story. In that case, you want to start thinking about heterogeneous treatment effects, and this is the podcast episode for you.

Relevant links:
https://eng.uber.com/analyzing-experiment-outcomes/
https://multithreaded.stitchfix.com/blog/2018/11/08/bandits/
https://www.locallyoptimistic.com/post/against-ab-tests/
Released:
Jan 20, 2019
Format:
Podcast episode

Titles in the series (100)

Linear Digressions is a podcast about machine learning and data science. Machine learning is being used to solve a ton of interesting problems, and to accomplish goals that were out of reach even a few short years ago.