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Sequential Bayesian inference in hidden Markov stochastic kinetic models with application to detection and response to seasonal epidemics

机译:隐马尔可夫随机动力学模型中的顺序贝叶斯推断及其在季节性流行病的检测和响应中的应用

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We study sequential Bayesian inference in stochastic kinetic models with latent factors. Assuming continuous observation of all the reactions, our focus is on joint inference of the unknown reaction rates and the dynamic latent states, modeled as a hidden Markov factor. Using insights from nonlinear filtering of continuous-time jump Markov processes we develop a novel sequential Monte Carlo algorithm for this purpose. Our approach applies the ideas of particle learning to minimize particle degeneracy and exploit the analytical jump Markov structure. A motivating application of our methods is modeling of seasonal infectious disease outbreaks represented through a compartmen-tal epidemic model. We demonstrate inference in such models with several numerical illustrations and also discuss predictive analysis of epidemic countermeasures using sequential Bayes estimates.
机译:我们研究具有潜在因子的随机动力学模型中的顺序贝叶斯推断。假设连续观察所有反应,我们的重点是对未知反应速率和动态潜伏状态的联合推断,以隐马尔可夫因子为模型。利用连续时间跳跃马尔可夫过程的非线性滤波的见解,我们为此目的开发了一种新颖的顺序蒙特卡洛算法。我们的方法运用粒子学习的思想来最大程度地减少粒子退化并利用解析跃迁马尔可夫结构。我们的方法的一个积极应用是通过隔间流行模型对季节性传染病暴发进行建模。我们用几个数值例证证明了这种模型的推论,并讨论了使用顺序贝叶斯估计的流行对策的预测分析。

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