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

机译:广义马尔可夫调制泊松过程的精确且计算高效的贝叶斯推理

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摘要

Statistical modeling of temporal point patterns is an important problem in several areas. The Cox process, a Poisson process where the intensity function is stochastic, is a common model for such data. We present a new class of unidimensional Cox process models in which the intensity function assumes parametric functional forms that switch according to a continuous-time Markov chain. A novel methodology is introduced to perform exact (up to Monte Carlo error) Bayesian inference based on MCMC algorithms. 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 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.
机译:时点模式的统计建模在多个领域都是一个重要问题。Cox 过程是强度函数随机的泊松过程,是此类数据的常见模型。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化函数形式,根据连续时间马尔可夫链进行切换。引入了一种新的方法,用于基于MCMC算法进行精确(直至蒙特卡洛误差)的贝叶斯推理。算法的可靠性取决于各种规范,这些规范经过仔细处理,从而产生计算效率高(就计算时间而言)的算法,并使其能够用于大型数据集。通过仿真和实际实例来说明该方法的有效性和适用性。提出了一个拟合流行曲线的特定模型,用于分析巴西登革热和一些国家COVID-19的数据。

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