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Causal Trees

Linear Digressions

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How to Overestimate a Causal Effect in a Data Set

The way that you're training that decision tree in this case is, yow. You're looking for different sub groups that split your population according to how they respond to the treatment. So yes, you have kind of an infinite number of different cuts that the decision tree could could make in order to partition the data set. Which means that it can pick he the cuts that shove all the super respondes into one group together. And then it's easy to think that you've uw. It's easy to overestimate, for example, the treatment effect that you have in that group. Is that what we refer to as overfitting?

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