Simple misspecification adaptive inference for interval identified parameters

Jörg Stoye
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Abstract

This paper revisits the simple, but empirically salient, problem of inference on a real-valued parameter that is partially identified through upper and lower bounds with asymptotically normal estimators. A simple confidence interval is proposed and is shown to have the following properties: - It is never empty or awkwardly short, including when the sample analog of the identified set is empty. - It is valid for a well-defined pseudotrue parameter whether or not the model is well-specified. - It involves no tuning parameters and minimal computation. In general, computing the interval requires concentrating out one scalar nuisance parameter. For uncorrelated estimators of bounds --notably if bounds are estimated from distinct subsamples-- and conventional coverage levels, this step can be skipped. The proposed $95\%$ confidence interval then simplifies to the union of a simple $90\%$ (!) confidence interval for the partially identified parameter and an equally simple $95\%$ confidence interval for a point-identified pseudotrue parameter. This case obtains in the motivating empirical application, in which improvement over existing inference methods is demonstrated. More generally, simulations suggest excellent length and size control properties.
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区间识别参数的简单错配自适应推理
本文重述了一个简单的,但经验上显著的问题,即通过渐近正态估计的上界和下界部分辨识的实值参数的推理问题。提出了一个简单的置信区间,并显示出以下属性:-它永远不会为空或尴尬的短,包括当识别集的样本模拟为空时。-无论模型是否指定良好,对于定义良好的伪真参数都有效。-它不涉及调优参数和最小的计算。一般来说,计算区间需要集中一个标量干扰参数。对于边界的不相关估计——特别是如果边界是从不同的子样本估计的——和传统的覆盖水平,这一步可以跳过。提出的$95\%$置信区间然后简化为部分识别参数的简单$90\%$(!)置信区间和点识别伪真参数的同样简单$95\%$置信区间的并集。这个案例是在激励的经验应用中得到的,其中证明了对现有推理方法的改进。更一般地说,模拟显示了出色的长度和大小控制特性。
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