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Asymptotic goodness-of-fit tests for point processes based on scaled empirical k-functions

机译:基于比例化经验k函数的点过程的渐近拟合优度检验

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摘要

We study sequences of scaled edge-corrected empirical (generalized) K-functions (modifying Ripley's K-function) each of them constructed from a single observation of a d-dimensional fourth-order stationary point process in a sampling window which grows together with some scaling rate unboundedly as . Under some natural assumptions it is shown that the normalized difference between scaled empirical and scaled theoretical K-function converges weakly to a mean zero Gaussian process with simple covariance function. This result suggests discrepancy measures between empirical and theoretical K-function with known limit distribution which allow to perform goodness-of-fit tests for checking a hypothesized point process based only on its intensity and (generalized) K-function. Similar test statistics are derived for testing the hypothesis that two independent point processes in have the same distribution without explicit knowledge of their intensities and K-functions.
机译:我们研究了按比例缩放的边缘校正的经验K(泛化)K函数(修改Ripley的K函数)的序列,每个序列都是通过在采样窗口中对d维四阶固定点过程进行一次观测而构建的,该采样窗口与某些窗口一起增长缩放率无限制地为。在某些自然假设下,证明了按比例缩放的经验K和按比例缩放的理论K函数之间的归一化差异弱收敛到具有简单协方差函数的平均零高斯过程。该结果表明,具有已知极限分布的经验K函数和理论K函数之间的差异度量允许仅通过其强度和(广义)K函数执行拟合优度检验,以检查假设的点过程。得出了相似的检验统计量,用于检验以下假设:两个独立的点过程具有相同的分布,而无需明确了解其强度和K函数。

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