4.5 Article

A point mass proposal method for Bayesian state-space model fitting

期刊

STATISTICS AND COMPUTING
卷 33, 期 5, 页码 -

出版社

SPRINGER
DOI: 10.1007/s11222-023-10268-6

关键词

Bayesian methods; Data augmentation; Hidden Markov models; Markov chain Monte Carlo (MCMC); State-space models

向作者/读者索取更多资源

This paper presents a novel algorithm for fitting state-space models, using Metropolis-within-Gibbs sampling guided by a deterministic hidden Markov model (HMM). The algorithm can efficiently handle highly correlated latent states and parameters, and is applicable to models that exhibit near-chaotic behavior.
State-space models (SSMs) are commonly used to model time series data where the observations depend on an unobserved latent process. However, inference on the model parameters of an SSM can be challenging, especially when the likelihood of the data given the parameters is not available in closed-form. One approach is to jointly sample the latent states and model parameters via Markov chain Monte Carlo (MCMC) and/or sequential Monte Carlo approximation. These methods can be inefficient, mixing poorly when there are many highly correlated latent states or parameters, or when there is a high rate of sample impoverishment in the sequential Monte Carlo approximations. We propose a novel block proposal distribution for Metropolis-within-Gibbs sampling on the joint latent state and parameter space. The proposal distribution is informed by a deterministic hidden Markov model (HMM), defined such that the usual theoretical guarantees of MCMC algorithms apply. We discuss how the HMMs are constructed, the generality of the approach arising from the tuning parameters, and how these tuning parameters can be chosen efficiently in practice. We demonstrate that the proposed algorithm using HMM approximations provides an efficient alternative method for fitting state-space models, even for those that exhibit near-chaotic behavior.

作者

我是这篇论文的作者
点击您的名字以认领此论文并将其添加到您的个人资料中。

评论

主要评分

4.5
评分不足

次要评分

新颖性
-
重要性
-
科学严谨性
-
评价这篇论文

推荐

暂无数据
暂无数据