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Comparison of the performance of particle filter algorithms applied to tracking of a disease epidemic

机译:用于跟踪疾病流行的粒子过滤器算法的性能比较

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摘要

We present general methodology for sequential inference in nonlinear stochastic state-space models to simultaneously estimate dynamic states and fixed parameters. We show that basic particle filters may fail due to degeneracy in fixed parameter estimation and suggest the use of a kernel density approximation to the filtered distribution of the fixed parameters to allow the fixed parameters to regenerate. In addition, we show that "seemingly" uninformative uniform priors on fixed parameters can affect posterior inferences and suggest the use of priors bounded only by the support of the parameter. We show the negative impact of using multinomial resampling and suggest the use of either stratified or residual resampling within the particle filter. As a motivating example, we use a model for tracking and prediction of a disease outbreak via a syndromic surveillance system. Finally, we use this improved particle filtering methodology to relax prior assumptions on model parameters yet still provide reasonable estimates for model parameters and disease states.
机译:我们提出了用于在非线性随机状态空间模型中同时推断动态状态和固定参数的顺序推理的一般方法。我们表明基本粒子滤波器可能会由于固定参数估计的简并性而失败,并建议对固定参数的滤波分布使用核密度近似值以使固定参数得以再生。此外,我们显示固定参数上“看似”无信息的统一先验会影响后验推断,并建议使用仅受参数支持限制的先验。我们展示了使用多项式重采样的负面影响,并建议在粒子滤波器中使用分层或残留重采样。作为一个激励性的例子,我们使用一种通过症状监测系统跟踪和预测疾病暴发的模型。最后,我们使用这种改进的粒子过滤方法来放宽对模型参数的先前假设,但仍可以为模型参数和疾病状态提供合理的估计。

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