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标记点过程复制数据中标记点依赖性的偏差校正与检验

Bias-Correction and Test for Mark-Point Dependence with Replicated Marked Point Processes

Journal of the American Statistical Association · 2022
被引 3
ABS 4

中文导读

针对标记点过程中标记与点之间的依赖关系,提出偏差校正的均值与协方差估计方法,并构建检验标记点独立性的统计量,通过模拟和实际数据验证有效性。

Abstract

Mark-point dependence plays a critical role in research problems that can be fitted into the general framework of marked point processes. In this work, we focus on adjusting for mark-point dependence when estimating the mean and covariance functions of the mark process, given independent replicates of the marked point process. We assume that the mark process is a Gaussian process and the point process is a log-Gaussian Cox process, where the mark-point dependence is generated through the dependence between two latent Gaussian processes. Under this framework, naive local linear estimators ignoring the mark-point dependence can be severely biased. We show that this bias can be corrected using a local linear estimator of the cross-covariance function and establish uniform convergence rates of the bias-corrected estimators. Furthermore, we propose a test statistic based on local linear estimators for mark-point independence, which is shown to converge to an asymptotic normal distribution in a parametric n-convergence rate. Model diagnostics tools are developed for key model assumptions and a robust functional permutation test is proposed for a more general class of mark-point processes. The effectiveness of the proposed methods is demonstrated using extensive simulations and applications to two real data examples. Supplementary materials for this article are available online.

标记点过程高斯过程协方差估计统计检验偏差校正