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Class-specific tests of spatial segregation based on nearest neighbor contingency tables

机译:基于最近邻居列联表的特定类别的空间隔离测试

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The spatial interaction between two or more classes might cause multivariate clustering patterns such as segregation or association, which can be tested using a nearest neighbor contingency table (NNCT). The null hypothesis is randomness in the nearest neighbor structure, which may result from random labeling (RL) or complete spatial randomness of points from two or more classes (which is henceforth called CSR independence). We consider Dixon's class-specific segregation test and introduce a new class-specific test, which is a new decomposition of Dixon's overall chi-squared segregation statistic. We analyze the distributional properties and compare the empirical significant levels and power estimates of the tests using extensive Monte Carlo simulations. We demonstrate that the new class-specific tests have comparable performance with the currently available tests based on NNCTs. For illustrative purposes, we use three example data sets and provide guidelines for using these tests.
机译:两个或多个类别之间的空间交互作用可能会导致多元聚类模式,例如分离或关联,可以使用最近邻列联表(NNCT)对其进行测试。零假设是最近邻居结构中的随机性,这可能是由于随机标记(RL)或两个或多个类别的点的完全空间随机性(此后称为CSR独立性)引起的。我们考虑了Dixon的特定类别隔离测试,并引入了新的特定类别测试,这是Dixon总体卡方隔离统计的新分解。我们分析分布特性,并使用广泛的蒙特卡洛模拟比较经验显着性水平和测试的功效估计。我们证明,新的特定于类的测试具有与基于NNCT的当前可用测试相当的性能。为了说明目的,我们使用三个示例数据集并提供使用这些测试的指南。

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