A Posterior-Based Wald-Type Statistic for Hypothesis Testing

Yong Li, Xiaobin Liu, T. Zeng, Jun Yu
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引用次数: 7

Abstract

A new Wald-type statistic is proposed for hypothesis testing based on Bayesian posterior distributions. The new statistic can be explained as a posterior version of Wald test and have several nice properties. First, it is well-defi ned under improper prior distributions. Second, it avoids Jeffreys-Lindley's paradox. Third, under the null hypothesis and repeated sampling, it follows a x2 distribution asymptotically, offering an asymptotically pivotal test. Fourth, it only requires inverting the posterior covariance for the parameters of interest. Fifth and perhaps most importantly, when a random sample from the posterior distribution (such as an MCMC output) is available, the proposed statistic can be easily obtained as a by-product of posterior simulation. In addition, the numerical standard error of the estimated proposed statistic can be computed based on the random sample. The finite sample performance of the statistic is examined in Monte Carlo studies. The method is applied to two latent variable models used in microeconometrics and financial econometrics.
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基于后验的假设检验wald型统计量
提出了一种新的基于贝叶斯后验分布的wald型统计量用于假设检验。新的统计量可以解释为沃尔德检验的后验版本,并具有几个很好的性质。首先,它在不适当的先验分布下是定义良好的。其次,它避免了杰弗里斯-林德利悖论。第三,在零假设和重复抽样下,它渐近地服从x2分布,提供渐近关键检验。第四,它只需要对感兴趣的参数进行后验协方差的反演。第五,也许也是最重要的,当一个随机样本从后验分布(如MCMC输出)是可用的,建议的统计量可以很容易地获得作为后验模拟的副产品。此外,可以根据随机样本计算估计的统计量的数值标准误差。在蒙特卡洛研究中检验了统计量的有限样本性能。该方法应用于微观计量经济学和金融计量经济学中使用的两个潜在变量模型。
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