Henrys P A, Brown P E
Department of Mathematics and Statistics, Lancaster University, Lancaster, UK.
Biometrics. 2009 Jun;65(2):423-30. doi: 10.1111/j.1541-0420.2008.01070.x. Epub 2008 May 18.
We propose a method to test for significant differences in the levels of clustering between two spatial point processes (cases and controls) while taking into account differences in their first-order intensities. The key advance on earlier methods is that the controls are not assumed to be a Poisson process. Inference and diagnostics are based around the inhomogeneous K-function with confidence envelopes obtained from either resampling events in a nonparametric bootstrap approach, or simulating new events as in a parametric bootstrap. Methods developed are demonstrated using the locations of adult and juvenile trees in a tropical forest. A simulation study briefly examines the accuracy and power of the inferential procedures.
我们提出了一种方法,用于检验两个空间点过程(病例和对照)之间聚类水平的显著差异,同时考虑它们一阶强度的差异。与早期方法相比,关键的进步在于不假定对照为泊松过程。推断和诊断基于非齐次K函数,其置信区间通过非参数自助法中的重采样事件获得,或者如参数自助法那样模拟新事件。使用热带森林中成年树和幼树的位置展示了所开发的方法。一项模拟研究简要考察了推断程序的准确性和功效。