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On thresholds for robust goodness-of-fit tests

机译:可靠的拟合优度测试的阈值

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Goodness-of-fit tests are statistical procedures used to test the hypothesis H0 that a set of observations were drawn according to some given probability distribution. Decision thresholds used in goodness-of-fit tests are typically set for guaranteeing a target false-alarm probability. In many popular testing procedures results on the weak convergence of the test statistics are used for setting approximate thresholds when exact computation is infeasible. In this work, we study robust procedures for goodness-of-fit where accurate models are not available for the distribution of the observations under hypothesis H0. We develop procedures for setting thresholds in two specific examples — a robust version of the Kolmogorov-Smirnov test for continuous alphabets and a robust version of the Hoeffding test for finite alphabets.
机译:拟合优度检验是用于检验假设H 0 的统计过程,假设H 0 根据一组给定的概率分布得出了一组观察值。拟合优度测试中使用的决策阈值通常是为了保证目标虚警概率而设置的。在许多流行的测试过程中,当无法进行精确计算时,会使用测试统计量弱收敛的结果来设置近似阈值。在这项工作中,我们研究了拟合优度的鲁棒程序,在假设H 0 下无法获得准确的模型来分布观测值的情况下。我们在两个特定的示例中开发了设置阈值的过程-连续字母的Kolmogorov-Smirnov测试的健壮版本和有限字母的Hoeffding测试的健壮版本。

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