Sambit Panda , Cencheng Shen , Ronan Perry , Jelle Zorn , Antoine Lutz , Carey E. Priebe , Joshua T. Vogelstein
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引用次数: 0
摘要
K 样本检验问题涉及确定 K 组数据点是否分别来自相同的分布。方差分析可以说是检验均值差异的最经典方法,最近还出现了几种检验分布差异的方法。在本文中,我们证明了一种转换的存在,它允许使用任何依赖性度量进行 K 样本检验。因此,普遍一致的 K 样本检验可以使用普遍一致的依赖性度量,如距离相关性和希尔伯特-施密特独立性准则。这样,各种依赖性测量方法就可以轻松地应用于 K 样本测试。
Universally consistent K-sample tests via dependence measures
The K-sample testing problem involves determining whether K groups of data points are each drawn from the same distribution. Analysis of variance is arguably the most classical method to test mean differences, along with several recent methods to test distributional differences. In this paper, we demonstrate the existence of a transformation that allows K-sample testing to be carried out using any dependence measure. Consequently, universally consistent K-sample testing can be achieved using a universally consistent dependence measure, such as distance correlation and the Hilbert–Schmidt independence criterion. This enables a wide range of dependence measures to be easily applied to K-sample testing.