4.6 Article

EXTREMAL QUANTILE TREATMENT EFFECTS

Journal

ANNALS OF STATISTICS
Volume 46, Issue 6B, Pages 3707-3740

Publisher

INST MATHEMATICAL STATISTICS
DOI: 10.1214/17-AOS1673

Keywords

Extreme quantile; intermediate quantile

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This paper establishes an asymptotic theory and inference method for quantile treatment effect estimators when the quantile index is close to or equal to zero. Such quantile treatment effects are of interest in many applications, such as the effect of maternal smoking on an infant's adverse birth outcomes. When the quantile index is close to zero, the sparsity of data jeopardizes conventional asymptotic theory and bootstrap inference. When the quantile index is zero, there are no existing inference methods directly applicable in the treatment effect context. This paper addresses both of these issues by proposing new inference methods that are shown to be asymptotically valid as well as having adequate finite sample properties.

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