The minimum contrast (MC) method, as compared to the likelihood-based methods, is a computationally efficient method for estimation and inference of parametric stationary spatial point processes. This advantage becomes more pronounced when working with complex point process models, such as multivariate log-Gaussian Cox processes (LGCP). Despite its practical importance, there is very little work on the MC method for multivariate point processes. The aim of this article is to introduce a new MC method for parametric multivariate stationary spatial point processes. A contrast function is calculated based on the trace of the power of the difference between the conjectured $K$-function matrix and its nonparametric unbiased edge-corrected estimator. Under regular assumptions, the asymptotic normality of the MC estimator of the model parameters is derived. The performance of the proposed method is illustrated with bivariate LGCP simulations and a real data analysis of a bivariate point pattern of the 2014 terrorist attacks in Nigeria retrieved from the Global Terrorism Database.
翻译:与基于可能性的方法相比,最小对比(MC)方法是一种估算和推断参数固定空间点过程的计算高效方法,在与多变量日志-Gausian Cox 进程等复杂点过程模型(LGCP)合作时,这一优势更加明显。尽管其实际重要性很大,但在多变量点过程的MC方法方面几乎没有做多少工作。本条款的目的是为多变量多变量静止空间点参数进程引入一种新的MC方法。对比功能是根据从全球恐怖主义数据库检索到的预测值$K的功能矩阵与非对称公正边缘校正估测器之间差异的功率的痕量计算的。在常规假设下,模型参数估计符的无常态常态性得到推算。拟议方法的性能通过双变量LGCP模拟和对尼日利亚2014年恐怖袭击的双变量点模式进行真实数据分析来说明。