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Confidence sets based on inverting Anderson-Rubin tests

机译:基于反向Anderson-Rubin检验的置信集

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Economists are often interested in the coefficient of a single endogenous explanatory variable in a linear simultaneous-equations model. One way to obtain a confidence set for this coefficient is to invert the Anderson-Rubin (AR) test. The AR confidence sets that result have correct coverage under classical assumptions. However, AR confidence sets also have many undesirable properties. It is well known that they can be unbounded when the instruments are weak, as is true of any test with correct coverage. However, even when they are bounded, their length may be very misleading, and their coverage conditional on quantities that the investigator can observe (notably, the Sargan statistic for overidentifying restrictions) can be far from correct. A similar property manifests itself, for similar reasons, when a confidence set for a single parameter is based on inverting an F-test for two or more parameters.
机译:经济学家通常对线性联立方程模型中单个内生解释变量的系数感兴趣。获得该系数的置信度集的一种方法是对安德森-鲁宾(AR)检验进行求逆。在经典假设下,得出的AR置信度集具有正确的覆盖范围。但是,AR置信度集还具有许多不良特性。众所周知,当仪器较弱时,它们可以不受限制,就像任何覆盖率正确的测试一样。但是,即使它们有界,它们的长度也可能会令人误解,并且其覆盖范围取决于研究人员可以观察到的量(特别是Sargan统计信息,用于过度识别限制)可能远非正确。出于相似的原因,当为单个参数设置置信度基于对两个或多个参数进行F检验求逆时,也会显示类似的属性。

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