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Questions about DML #244

Answered by SvenKlaassen
benTC74 asked this question in Q&A
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Hi @benTC74,

just as short comments to your points:

  1. This is typical for causal inference. Your conclusions are based on the assumptions of your model (e.g. in the PLR, how good your model approximates reality, does conditional exogeneity hold). You have to argue this based on your usecase and maybe include some sort of Sensitivity Analysis. For each learner you can try to evaluate the cross-fitted performance e.g. directly via DoubleML (see here or on your own. There is no definite answer to this.
  2. The p-value and confidence intervals are based on your model assumptions and learner qualities. So first, if your identifying assumptions dont hold then you will estimate a parameter with a dif…

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