A0215
Title: On minimum contrast method for multivariate spatial point processes
Authors: Junho Yang - Academia Sinica (Taiwan) [presenting]
Abstract: Compared to widely used likelihood-based approaches, the minimum contrast (MC) method is a computationally efficient method for the estimation and inference of parametric stationary point processes. This advantage becomes more pronounced when analyzing complex point process models, such as multivariate log-Gaussian Cox processes (LGCP). Despite its practical advantages, there is very little work on the MC method for multivariate point processes. The aim 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 standard 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 real data analysis of a bivariate point pattern of the 2014 terrorist attacks in Nigeria.