Bayesian Data Augmentation for Partially Observed Stochastic Compartmental Models

IF 4.9 2区 数学 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Bayesian Analysis Pub Date : 2022-06-17 DOI:10.1214/23-ba1398
Shuying Wang, S. Walker
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引用次数: 1

Abstract

Deterministic compartmental models are predominantly used in the modeling of infectious diseases, though stochastic models are considered more realistic, yet are complicated to estimate due to missing data. In this paper we present a novel algorithm for estimating the stochastic SIR/SEIR epidemic model within a Bayesian framework, which can be readily extended to more complex stochastic compartmental models. Specifically, based on the infinitesimal conditional independence properties of the model, we are able to find a proposal distribution for a Metropolis algorithm which is very close to the correct posterior distribution. As a consequence, rather than perform a Metropolis step updating one missing data point at a time, as in the current benchmark Markov chain Monte Carlo (MCMC) algorithm, we are able to extend our proposal to the entire set of missing observations. This improves the MCMC methods dramatically and makes the stochastic models now a viable modeling option. A number of real data illustrations and the necessary mathematical theory supporting our results are presented.
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部分观测随机区室模型的贝叶斯数据增强
确定性分区模型主要用于传染病建模,尽管随机模型被认为更现实,但由于数据缺失,估计起来很复杂。在本文中,我们提出了一种在贝叶斯框架内估计随机SIR/SEIR流行病模型的新算法,该算法可以很容易地扩展到更复杂的随机分区模型。具体来说,基于模型的无穷小条件独立性,我们能够找到Metropolis算法的建议分布,该建议分布非常接近正确的后验分布。因此,我们可以将我们的建议扩展到整个缺失观测集,而不是像当前的基准马尔可夫链蒙特卡罗(MCMC)算法那样,执行Metropolis步骤一次更新一个缺失数据点。这大大改进了MCMC方法,使随机模型现在成为一种可行的建模选择。给出了一些实际数据的说明和必要的数学理论来支持我们的结果。
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来源期刊
Bayesian Analysis
Bayesian Analysis 数学-数学跨学科应用
CiteScore
6.50
自引率
13.60%
发文量
59
审稿时长
>12 weeks
期刊介绍: Bayesian Analysis is an electronic journal of the International Society for Bayesian Analysis. It seeks to publish a wide range of articles that demonstrate or discuss Bayesian methods in some theoretical or applied context. The journal welcomes submissions involving presentation of new computational and statistical methods; critical reviews and discussions of existing approaches; historical perspectives; description of important scientific or policy application areas; case studies; and methods for experimental design, data collection, data sharing, or data mining. Evaluation of submissions is based on importance of content and effectiveness of communication. Discussion papers are typically chosen by the Editor in Chief, or suggested by an Editor, among the regular submissions. In addition, the Journal encourages individual authors to submit manuscripts for consideration as discussion papers.
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