Shrinkage Methods for Treatment Choice
This study examines the problem of determining whether to treat individuals based on observed covariates. The most common decision rule is the conditional empirical success (CES) rule proposed by Manski (2004), which assigns individuals to treatments that yield the best experimental outcomes conditi...
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Zusammenfassung: | This study examines the problem of determining whether to treat individuals
based on observed covariates. The most common decision rule is the conditional
empirical success (CES) rule proposed by Manski (2004), which assigns
individuals to treatments that yield the best experimental outcomes conditional
on the observed covariates. Conversely, using shrinkage estimators, which
shrink unbiased but noisy preliminary estimates toward the average of these
estimates, is a common approach in statistical estimation problems because it
is well-known that shrinkage estimators have smaller mean squared errors than
unshrunk estimators. Inspired by this idea, we propose a computationally
tractable shrinkage rule that selects the shrinkage factor by minimizing the
upper bound of the maximum regret. Then, we compare the maximum regret of the
proposed shrinkage rule with that of CES and pooling rules when the parameter
space is correctly specified or misspecified. Our theoretical results
demonstrate that the shrinkage rule performs well in many cases and these
findings are further supported by numerical experiments. Specifically, we show
that the maximum regret of the shrinkage rule can be strictly smaller than that
of the CES and pooling rules in certain cases when the parameter space is
correctly specified. In addition, we find that the shrinkage rule is robust
against misspecifications of the parameter space. Finally, we apply our method
to experimental data from the National Job Training Partnership Act Study. |
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DOI: | 10.48550/arxiv.2210.17063 |