This paper proposes a new methodology to perform Bayesian inference for a class of multidimensional Cox processes in which the intensity function is piecewise constant. Poisson processes with piecewise constant intensity functions are believed to be suitable to model a variety of point process phenomena and, given its simpler structure, are expected to provide more precise inference when compared to processes with non-parametric and continuously varying intensity functions. The partition of the space domain is flexibly determined by a level-set function of a latent Gaussian process. Despite the intractability of the likelihood function and the infinite dimensionality of the parameter space, inference is performed exactly, in the sense that no space discretization approximation is used and MCMC error is the only source of inaccuracy. That is achieved by using retrospective sampling techniques and devising a pseudo-marginal infinite-dimensional MCMC algorithm that converges to the exact target posterior distribution. Computational efficiency is favored by considering a nearest neighbor Gaussian process, allowing for the analysis of large datasets. An extension to consider spatiotemporal models is also proposed. The efficiency of the proposed methodology is investigated in simulated examples and its applicability is illustrated in the analysis of some real point process datasets.
翻译:本文提出一种新的方法,用于对一组多维考克斯进程进行巴耶斯式推断,其中强度函数是小数不变的。 具有小数常数强度函数的 Poisson 进程被认为适合于模拟各种点进程现象,而且鉴于其结构更简洁,在与非参数函数和连续不同强度函数的进程相比时,预计将提供更精确的推断。 空间域的分隔由潜潜伏高斯进程的一个水平设定函数灵活决定。 尽管参数空间的概率函数和无限维度具有吸引力,但精确地进行了推断,因为没有使用空间离散近率,而且MCMC错误是不准确的唯一来源。通过使用追溯性取样技术和设计一种假边际无限的 MMC 算法,使之与精确的目标后方分布相匹配。通过考虑最近的邻居高斯进程,允许对大数据集进行分析,可以提高计算效率。 在模拟数据分析中,还提出了一些模拟模型的应用性模型。