The literature focuses on minimizing the mean of welfare regret, which can lead to undesirable treatment choice due to sampling uncertainty. We propose to minimize the mean of a nonlinear transformation of regret and show that admissible rules are fractional for nonlinear regret. Focusing on mean square regret, we derive closed-form fractions for finite-sample Bayes and minimax optimal rules. Our approach is grounded in decision theory and extends to limit experiments. The treatment fractions can be viewed as the strength of evidence favoring treatment. We apply our framework to a normal regression model and sample size calculations in randomized experiments.
翻译:文献集中于最小化福利后悔的均值,这可以由于抽样不确定性而导致不良的治疗选择。我们建议最小化后悔的非线性变换的平均值,并表明,可接受的规则是非整数的。专注于平均均方后悔,我们为有限样本贝叶斯和极小值最优规则导出了闭合分数。我们的方法根植于决策理论,并扩展到极限实验。治疗分数可以被视为有利于治疗的证据的强度。我们将我们的框架应用于正常回归模型和随机实验中的样本量计算。