Data-Adaptive Causal Effects and Superefficiency
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AbstractRecent approaches in causal inference have proposed estimating average causal effects that are local to some subpopulation, often for reasons of efficiency. These inferential targets are sometimes data-adaptive, in that they are dependent on the empirical distribution of the data. In this short note, we show that if researchers are willing to adapt the inferential target on the basis of efficiency, then extraordinary gains in precision can potentially be obtained. Specifically, when causal effects are heterogeneous, any asymptotically normal and root-$n$ consistent estimator of the population average causal effect is superefficient for a data-adaptive local average causal effect.
2019 ◽
Vol 188
(9)
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pp. 1682-1685
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2019 ◽
Vol 24
(3)
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pp. 109-112
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2021 ◽
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2021 ◽
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2018 ◽
Vol 43
(5)
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pp. 540-567
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2005 ◽
Vol 30
(4)
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pp. 397-412
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