论文标题

精确和计算高效的贝叶斯推断,用于广义马尔可夫调制泊松过程

Exact and computationally efficient Bayesian inference for generalized Markov modulated Poisson processes

论文作者

Gonçalves, Flavio B., Dutra, Livia M., Silva, Roger W. C.

论文摘要

点模式的统计模型在多个领域是一个重要且常见的问题。泊松过程是用于此目的的最常见过程,尤其是其概括,它认为强度函数是随机的。这称为COX过程和不同的选择,以建模强度的动力学产生了广泛的模型。我们提出了一类新的一维COX过程模型,其中强度函数采用参数功能形式,根据连续时间马尔可夫链在它们之间切换。提出了一种新的方法来基于MCMC算法执行精确的贝叶斯推断。术语完全指的是没有使用离散时间近似,而蒙特卡洛误差是唯一的不准确来源。该算法的可靠性取决于仔细解决的各种规格,从而导致计算效率(在计算时间)算法上,并允许其与大型数据集使用。提出了模拟和真实示例,以说明所提出方法的效率和适用性。提出了一个适合流行曲线的特定模型,并用于分析巴西登革热和某些国家的Covid-19的数据。

Statistical modeling of point patterns is an important and common problem in several areas. The Poisson process is the most common process used for this purpose, in particular, its generalization that considers the intensity function to be stochastic. This is called a Cox process and different choices to model the dynamics of the intensity gives rise to a wide range of models. We present a new class of unidimensional Cox process models in which the intensity function assumes parametric functional forms that switch among them according to a continuous-time Markov chain. A novel methodology is proposed to perform exact Bayesian inference based on MCMC algorithms. The term exact refers to the fact that no discrete time approximation is used and Monte Carlo error is the only source of inaccuracy. The reliability of the algorithms depends on a variety of specifications which are carefully addressed, resulting in a computationally efficient (in terms of computing time) algorithm and enabling its use with large data sets. Simulated and real examples are presented to illustrate the efficiency and applicability of the proposed methodology. A specific model to fit epidemic curves is proposed and used to analyze data from Dengue Fever in Brazil and COVID-19 in some countries.

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