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The intermediates take it all: Asymptotics of higher criticism statistics and a powerful alternative based on equal local levels

机译:中间语将所有内容都包含在内:渐进式批评统计的渐近性以及基于平等地方水平的强大替代方法

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摘要

The higher criticism (HC) statistic, which can be seen as a normalized version of the famous Kolmogorov-Smirnov statistic, has a long history, dating back to the mid seventies. Originally, HC statistics were used in connection with goodness of fit (GOF) tests but they recently gained some attention in the context of testing the global null hypothesis in high dimensional data. The continuing interest for HC seems to be inspired by a series of nice asymptotic properties related to this statistic. For example, unlike Kolmogorov-Smirnov tests, GOF tests based on the HC statistic are known to be asymptotically sensitive in the moderate tails, hence it is favorably applied for detecting the presence of signals in sparse mixture models. However, some questions around the asymptotic behavior of the HC statistic are still open. We focus on two of them, namely, why a specific intermediate range is crucial for GOF tests based on the HC statistic and why the convergence of the HC distribution to the limiting one is extremely slow. Moreover, the inconsistency in the asymptotic and finite behavior of the HC statistic prompts us to provide a new HC test that has better finite properties than the original HC test while showing the same asymptotics. This test is motivated by the asymptotic behavior of the so-called local levels related to the original HC test. By means of numerical calculations and simulations we show that the new HC test is typically more powerful than the original HC test in normal mixture models.
机译:较高的批评(HC)统计可以看作是著名的Kolmogorov-Smirnov统计的归一化版本,其历史可以追溯到七十年代中期。最初,HC统计信息是与拟合优度(GOF)测试结合使用的,但是最近它们在测试高维数据中的全局零假设的情况下引起了一定的关注。对HC的持续关注似乎是受与此统计相关的一系列良好渐近性质的启发。例如,与Kolmogorov-Smirnov检验不同,基于HC统计量的GOF检验在中度尾部具有渐近敏感性,因此,该方法可理想地用于检测稀疏混合模型中信号的存在。但是,关于HC统计量的渐近行为的一些问题仍未解决。我们关注其中的两个,即为什么特定的中间范围对于基于HC统计的GOF测试至关重要,以及为什么HC分布与极限值的收敛非常缓慢。此外,HC统计量的渐近性和有限行为的不一致促使我们提供了一种新的HC测试,其具有比原始HC测试更好的有限属性,同时表现出相同的渐近性。该测试是由与原始HC测试相关的所谓局部水平的渐近行为引起的。通过数值计算和模拟,我们表明,在普通混合物模型中,新的HC测试通常比原始的HC测试更强大。

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