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Score Statistics for Current Status Data: Comparisons with Likelihood Ratio and Wald Statistics

机译:当前状态数据的得分统计:与可能性比和Wald的比较 统计

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摘要

In this paper we introduce three natural "score statistics" for testing the hypothesis that F(t_0)takes on a fixed value in the context of nonparametric inference with current status data. These three new test statistics have natural interpretations in terms of certain (weighted) L_2 distances, and are also connected to natural "one-sided" scores. We compare these new test statistics with the analogue of the classical Wald statistic and the likelihood ratio statistic introduced in Banerjee and Wellner (2001) for the same testing problem. Under classical "regular" statistical problems the likelihood ratio, score, and Wald statistics all have the same chi-squared limiting distribution under the null hypothesis. In sharp contrast, in this non-regular problem all three statistics have different limiting distributions under the null hypothesis. Thus we begin by establishing the limit distribution theory of the statistics under the null hypothesis, and discuss calculation of the relevant critical points for the test statistics. Once the null distribution theory is known, the immediate question becomes that of power. We establish the limiting behavior of the three types of statistics under local alternatives. We have also compared the power of these five different statistics via a limited Monte-Carlo study. Our conclusions are: (a) the Wald statistic is less powerful than the likelihood ratio and score statistics; and (b) one of the score statistics may have more power than the likelihood ratio statistic for some alternatives.
机译:在本文中,我们介绍了三种自然的“得分统计”,用于检验在当前状态数据进行非参数推断的情况下F(t_0)采用固定值的假设。这三个新的测试统计量对某些(加权)L_2距离具有自然的解释,并且还与自然的“单面”得分相关。对于相同的测试问题,我们将这些新的检验统计量与经典Wald统计量和Banerjee and Wellner(2001)中引入的似然比统计量的类似物进行比较。在经典的“常规”统计问题下,似然比,得分和Wald统计在原假设下均具有相同的卡方极限分布。与此形成鲜明对比的是,在这个非正规问题中,在原假设下,所有三个统计量都有不同的极限分布。因此,我们首先在零假设下建立统计的极限分布理论,然后讨论检验统计的相关临界点的计算。一旦知道了零分布理论,直接的问题就变成了权力问题。我们在本地替代方案下建立了三种统计类型的限制行为。我们还通过有限的蒙特卡洛研究比较了这五个不同统计数据的功效。我们的结论是:(a)Wald统计量不如似然比和得分统计量强大; (b)对于某些替代方案,得分统计之一可能比似然比统计具有更大的功效。

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