基于几何图的两样本检验的渐近分布和检测阈值

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC ACS Applied Electronic Materials Pub Date : 2020-10-01 DOI:10.1214/19-AOS1913
B. Bhattacharya
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引用次数: 5

摘要

在本文中,我们考虑了基于几何图的两个多元分布的相等性检验问题,几何图是使用观测值之间的点间距离构建的。其中包括基于最小生成树和K近邻(NN)图的测试等。这些测试是渐近无分布的、普遍一致的,并且计算效率高,这使得它们在现代应用中特别有用。然而,对这些测试的功率特性知之甚少。本文利用稳定几何图的理论,在Poissonized设置中,导出了这些检验在一般备选方案下的渐近分布。利用此方法,获得了基于K-NN图的测试的检测阈值和极限局部幂,其中出现了取决于维数的有趣指数。这提供了一种方法来比较和证明这些测试在不同示例中的性能。
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Asymptotic distribution and detection thresholds for two-sample tests based on geometric graphs
In this paper we consider the problem of testing the equality of two multivariate distributions based on geometric graphs, constructed using the inter-point distances between the observations. These include the test based on the minimum spanning tree and the K-nearest neighbor (NN) graphs, among others. These tests are asymptotically distribution-free, universally consistent, and computationally efficient, making them particularly useful in modern applications. However, very little is known about the power properties of these tests. In this paper, using theory of stabilizing geometric graphs, we derive the asymptotic distribution of these tests under general alternatives, in the Poissonized setting. Using this, the detection threshold and the limiting local power of the test based on the K-NN graph are obtained, where interesting exponents depending on dimension emerge. This provides a way to compare and justify the performance of these tests in different examples.
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CiteScore
7.20
自引率
4.30%
发文量
567
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