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On the use of nearest neighbor contingency tables for testing spatial segregation

机译:关于使用最近邻居列联表测试空间隔离

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For two or more classes (or types) of points, nearest neighbor contingency tables (NNCTs) are constructed using nearest neighbor (NN) frequencies and are used in testing spatial segregation of the classes. Pielou's test of independence, Dixon's cell-specific, class-specific, and overall tests are the tests based on NNCTs (i.e., they are NNCT-tests). These tests are designed and intended for use under the null pattern of random labeling (RL) of completely mapped data. However, it has been shown that Pielou's test is not appropriate for testing segregation against the RL pattern while Dixon's tests are. In this article, we compare Pielou's and Dixon's NNCT-tests; introduce the one-sided versions of Pielou's test; extend the use of NNCT-tests for testing complete spatial randomness (CSR) of points from two or more classes (which is called CSR independence, henceforth). We assess the finite sample performance of the tests by an extensive Monte Carlo simulation study and demonstrate that Dixon's tests are also appropriate for testing CSR independence; but Pielou's test and the corresponding one-sided versions are liberal for testing CSR independence or RL. Furthermore, we show that Pielou's tests are only appropriate when the NNCT is based on a random sample of (base, NN) pairs. We also prove the consistency of the tests under their appropriate null hypotheses. Moreover, we investigate the edge (or boundary) effects on the NNCT-tests and compare the buffer zone and toroidal edge correction methods for these tests. We illustrate the tests on a real life and an artificial data set.
机译:对于两个或两个以上的点类(或类型),使用最近邻(NN)频率构建最近邻偶发表(NNCT),并将其用于测试这些类的空间隔离。 Pielou的独立性测试,Dixon的特定单元格,特定的类以及整体测试是基于NNCT的测试(即,它们是NNCT测试)。这些测试旨在用于完全映射的数据的随机标记(RL)的空模式下。但是,已经证明,与Dixon的测试相比,Pielou的测试不适用于针对RL模式的偏析测试。在本文中,我们比较了Pielou和Dixon的NNCT检验。介绍Pielou测试的单面版本;扩展了NNCT测试的使用,以测试两个或多个类的点的完整空间随机性(CSR)(此后称为CSR独立性)。我们通过广泛的蒙特卡洛模拟研究评估了测试的有限样本性能,并证明了Dixon的测试也适合测试CSR独立性。但Pielou的测试和相应的单面版本对于测试CSR独立性或RL而言是自由的。此外,我们证明了Pielou的检验仅在NNCT基于(基本,NN)对的随机样本时才是合适的。我们还根据适当的零假设证明了检验的一致性。此外,我们研究了NNCT测试的边缘(或边界)影响,并比较了这些测试的缓冲区和环形边缘校正方法。我们说明了对现实生活和人工数据集的测试。

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