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Coupling stochastic EM and approximate Bayesian computation for parameter inference in state-space models

机译:耦合随机EM和近似贝叶斯计算在状态空间模型中的参数推断

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摘要

We study the class of state-space models and perform maximum likelihood estimation for the model parameters. We consider a stochastic approximation expectation-maximization (SAEM) algorithm to maximize the likelihood function with the novelty of using approximate Bayesian computation (ABC) within SAEM. The task is to provide each iteration of SAEM with a filtered state of the system, and this is achieved using an ABC sampler for the hidden state, based on sequential Monte Carlo methodology. It is shown that the resulting SAEM-ABC algorithm can be calibrated to return accurate inference, and in some situations it can outperform a version of SAEM incorporating the bootstrap filter. Two simulation studies are presented, first a nonlinear Gaussian state-space model then a state-space model having dynamics expressed by a stochastic differential equation. Comparisons with iterated filtering for maximum likelihood inference, and Gibbs sampling and particle marginal methods for Bayesian inference are presented.
机译:我们研究了国家空间模型的类,对模型参数进行了最大似然估计。我们考虑随机近似期望 - 最大化(SAEM)算法,以最大限度地利用SAEM中使用近似贝叶斯计算(ABC)的新颖性。该任务是提供具有系统的过滤状态的SAEM的每次迭代,并且基于顺序蒙特卡罗方法,使用ABC采样器来实现这一点。结果表明,可以校准生成的SAEM-ABC算法以返回准确推理,并且在某些情况下,它可以越优于包含引导滤波器的SAEM版本。提出了两个模拟研究,首先是一个非线性高斯状态空间模型,然后是具有由随机微分方程表示的动态的状态空间模型。提出了利用迭代过滤的比较,以获得最大似然推断,以及贝叶斯推断的GIBBS采样和粒子边缘方法。

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