This paper presents a kriging method for spatial prediction of temporal intensity functions, for situations where a temporal point process is observed at different spatial locations. Assuming that several replications of the processes are available at the spatial sites, this method avoids assumptions like isotropy, which are not valid in many applications. As part of the derivations, new nonparametric estimators for the mean and covariance functions of temporal point processes are introduced, and their properties are studied theoretically and by simulation. The method is applied to the analysis of bike demand patterns in the Divvy bicycle sharing system of the city of Chicago.
翻译:对于在不同空间地点观测到时间点过程的情况,本文介绍了对时间强度函数的空间预测的克里格方法,假设空间地点可以提供若干过程的复制,这种方法避免了许多应用中无效的偏移等假设,作为推断的一部分,引入了对时间点过程的平均值和共变函数的新的非参数性估计,对时间点过程的特性进行了理论和模拟研究,这种方法用于分析芝加哥市Divvy自行车共享系统中的自行车需求模式。