赢家的诅咒
诅咒
推论
收益
估计员
选择(遗传算法)
计量经济学
置信区间
经济
选择偏差
计算机科学
统计
机器学习
数学
人工智能
社会学
会计
人类学
作者
Isaiah Andrews,Toru Kitagawa,Adam McCloskey
摘要
Abstract Policy makers, firms, and researchers often choose among multiple options based on estimates. Sampling error in the estimates used to guide choice leads to a winner’s curse, since we are more likely to select a given option precisely when we overestimate its effectiveness. This winner’s curse biases our estimates for selected options upward and can invalidate conventional confidence intervals. This article develops estimators and confidence intervals that eliminate this winner’s curse. We illustrate our results by studying selection of job-training programs based on estimated earnings effects and selection of neighborhoods based on estimated economic opportunity. We find that our winner’s curse corrections can make an economically significant difference to conclusions but still allow informative inference.
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