A Simple and Adaptive Confidence Interval when Nuisance Parameters Satisfy an Inequality

Gregory Fletcher Cox
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Abstract

Inequalities may appear in many models. They can be as simple as assuming a parameter is nonnegative, possibly a regression coefficient or a treatment effect. This paper focuses on the case that there is only one inequality and proposes a confidence interval that is particularly attractive, called the inequality-imposed confidence interval (IICI). The IICI is simple. It does not require simulations or tuning parameters. The IICI is adaptive. It reduces to the usual confidence interval (calculated by adding and subtracting the standard error times the $1 - \alpha/2$ standard normal quantile) when the inequality is sufficiently slack. When the inequality is sufficiently violated, the IICI reduces to an equality-imposed confidence interval (the usual confidence interval for the submodel where the inequality holds with equality). Also, the IICI is uniformly valid and has (weakly) shorter length than the usual confidence interval; it is never longer. The first empirical application considers a linear regression when a coefficient is known to be nonpositive. A second empirical application considers an instrumental variables regression when the endogeneity of a regressor is known to be nonnegative.
滋扰参数满足不等式时的简单自适应置信区间
不等式可能出现在许多模型中。它们可以是简单的假设参数为非负,可能是回归系数或治疗效果。本文主要讨论只有一个不等式的情况,并提出了一个特别有吸引力的置信区间,即 "不等式置信区间(IICI)"。IICI 非常简单。它不需要模拟或调整参数。IICI 是自适应的。当不等式足够松弛时,它就会缩小为通常的置信区间(通过加减标准误差乘以 1 - \alpha/2$ 标准正态量值来计算)。当不等式被充分违反时,IICI 变为等式置信区间(不等式等式成立的子模型的通常置信区间)。此外,IICI 是均匀有效的,其长度(弱)短于通常置信区间;它永远不会更长。第一个经验应用考虑的是已知系数为非正值的线性回归。第二个实证应用考虑的是已知回归因子的内生性为非负时的工具变量回归。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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