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A decomposition of Moran's I for clustering detection

机译:用于簇检测的Moran I的分解

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The test statistics Ih, Ic, and In are derived by decomposing the numerator of the Moran's I test for high-value clustering, low-value clustering, and negative autocorrelation, respectively. Formulae to compute the means and variances of these test statistics are derived under a random permutation test scheme, and the p-values of the test statistics are computed by asymptotic normality. A set of simulations shows that test statistic Ih is likely to be significant only for high-value clustering, test statistic Ic is likely to be significant only for low-value clustering, and test statistic In is likely to be significant only for negatively correlated spatial structures. These test statistics were used to reexamine spatial distributions of sudden infant death syndrome in North Carolina and the pH values of streams in the Great Smoky Mountains. In both analyses, low-value clustering and high-value clustering were shown to exit simultaneously.
机译:通过分别分解用于高值聚类,低值聚类和负自相关的Moran I测试的分子,得出测试统计量Ih,Ic和In。在随机排列检验方案下,得出了计算这些检验统计量的均值和方差的公式,并通过渐近正态性计算了检验统计量的p值。一组模拟显示,测试统计量Ih仅对高值聚类才有意义,测试统计量Ic仅对低值聚类才有意义,并且测试统计量In仅对负相关的空间才有意义。结构。这些测试统计数据用于重新检查北卡罗莱纳州婴儿猝死综合征的空间分布以及大烟山溪流的pH值。在这两种分析中,低价值聚类和高价值聚类均显示为同时退出。

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