We investigate testing of the hypothesis of independence between a covariate and the marks in a marked point process. It would be rather straightforward if the (unmarked) point process were independent of the covariate and the marks. In practice, however, such an assumption is questionable and possible dependence between the point process and the covariate or the marks may lead to incorrect conclusions. Therefore, we propose to investigate the complete dependence structure in the triangle points--marks--covariates together. We take advantage of the recent development of the nonparametric random shift methods, namely the new variance correction approach, and propose tests of the null hypothesis of independence between the marks and the covariate and between the points and the covariate. We present a detailed simulation study showing the performance of the methods and provide two theorems establishing the appropriate form of the correction factors for the variance correction. Finally, we illustrate the use of the proposed methods in two real applications.
翻译:我们用一个标记点来调查一个共变点和标记之间独立假设的测试,如果(未标记的)点过程独立于共变点和标记,则比较简单。但在实践中,这种假设是有疑问的,点过程与共变点或标记之间可能存在依赖性,可能导致得出不正确的结论。因此,我们提议一起调查三角点-标记-共变点-共变点的完全依赖性结构。我们利用非对称随机转移方法的最新发展,即新的差异校正方法,提出标记与共变点之间以及点与同变点之间完全独立假设的测试。我们提出一个详细的模拟研究,说明方法的性能,并提供两个理论,确定差异校正因素的适当形式。最后,我们用两种实际应用来说明拟议方法的使用情况。