A Two-stage Inference Procedure for Sample Local Average Treatment Effects in Randomized Experiments
In a given randomized experiment, individuals are often volunteers and can differ in important ways from a population of interest. It is thus of interest to focus on the sample at hand. This paper focuses on inference about the sample local average treatment effect (LATE) in randomized experiments w...
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Zusammenfassung: | In a given randomized experiment, individuals are often volunteers and can
differ in important ways from a population of interest. It is thus of interest
to focus on the sample at hand. This paper focuses on inference about the
sample local average treatment effect (LATE) in randomized experiments with
non-compliance. We present a two-stage procedure that provides asymptotically
correct coverage rate of the sample LATE in randomized experiments. The
procedure uses a first-stage test to decide whether the instrument is strong or
weak, and uses different confidence sets depending on the first-stage result.
Proofs of the procedure is developed for the situation with and without
regression adjustment and for two experimental designs (complete randomization
and Mahalaonobis distance based rerandomization). Finite sample performance of
the methods are studied using extensive Monte Carlo simulations and the methods
are applied to data from a voter encouragement experiment. |
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DOI: | 10.48550/arxiv.2409.13300 |