Pairwise interaction function estimation of stationary Gibbs point processes using basis expansion

Ismaila Ba, Jean‐François Coeurjolly, F. Cuevas-Pacheco
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Abstract

The class of Gibbs point processes (GPP) is a large class of spatial point processes able to model both clustered and repulsive point patterns. They are specified by their conditional intensity, which for a point pattern $\mathbf{x}$ and a location $u$, is roughly speaking the probability that an event occurs in an infinitesimal ball around $u$ given the rest of the configuration is $\mathbf{x}$. The most simple and natural class of models is the class of pairwise interaction point processes where the conditional intensity depends on the number of points and pairwise distances between them. This paper is concerned with the problem of estimating the pairwise interaction function non parametrically. We propose to estimate it using an orthogonal series expansion of its logarithm. Such an approach has numerous advantages compared to existing ones. The estimation procedure is simple, fast and completely data-driven. We provide asymptotic properties such as consistency and asymptotic normality and show the efficiency of the procedure through simulation experiments and illustrate it with several datasets.
基于基展开的平稳Gibbs点过程的两两相互作用函数估计
吉布斯点过程(Gibbs point processes, GPP)是一类能够模拟聚类和排斥点模式的空间点过程。它们由它们的条件强度指定,对于点模式$\mathbf{x}$和位置$u$,粗略地说,事件发生在$u$周围的无限小球中,给定其余配置为$\mathbf{x}$的概率。最简单和最自然的一类模型是成对相互作用点过程,其中条件强度取决于点的数量和它们之间的成对距离。本文研究了非参数估计两两相互作用函数的问题。我们建议用它的对数的正交级数展开来估计它。与现有的方法相比,这种方法有许多优点。估算过程简单、快速且完全由数据驱动。我们提供了渐近性质,如一致性和渐近正态性,并通过仿真实验证明了该过程的有效性,并用几个数据集说明了它。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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