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Fitting mechanistic epidemic models to data: A comparison of simple Markov chain Monte Carlo approaches

机译:使流行病模型适应数据:简单马尔可夫链蒙特卡洛方法的比较

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摘要

Simple mechanistic epidemic models are widely used for forecasting and parameter estimation of infectious diseases based on noisy case reporting data. Despite the widespread application of models to emerging infectious diseases, we know little about the comparative performance of standard computational-statistical frameworks in these contexts. Here we build a simple stochastic, discrete-time, discrete-state epidemic model with both process and observation error and use it to characterize the effectiveness of different flavours of Bayesian Markov chain Monte Carlo (MCMC) techniques. We use fits to simulated data, where parameters (and future behaviour) are known, to explore the limitations of different platforms and quantify parameter estimation accuracy, forecasting accuracy, and computational efficiency across combinations of modeling decisions (e.g. discrete vs. continuous latent states, levels of stochasticity) and computational platforms (JAGS, NIMBLE, Stan).
机译:简单的机械流行病模型被广泛用于基于嘈杂病例报告数据的传染病预测和参数估计。尽管模型在新兴传染病中得到了广泛应用,但我们对这些情况下标准计算统计框架的比较性能知之甚少。在这里,我们建立了一个简单的具有过程和观测误差的随机,离散时间,离散状态的流行病模型,并使用它来表征不同风味的贝叶斯马尔可夫链蒙特卡洛(MCMC)技术的有效性。我们在已知参数(和未来行为)的情况下对模拟数据进行拟合,以探索不同平台的局限性,并在建模决策组合(例如离散或连续潜在状态,随机性水平)和计算平台(JAGS,NIMBLE,Stan)。

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