Particle approximations of the score and observed information matrix in state space models with application to parameter estimation
成果类型:
Article
署名作者:
Poyiadjis, George; Doucet, Arnaud; Singh, Sumeetpal S.
署名单位:
University of British Columbia; University of Cambridge
刊物名称:
BIOMETRIKA
ISSN/ISSBN:
0006-3444
DOI:
10.1093/biomet/asq062
发表日期:
2011
页码:
6580
关键词:
monte-carlo
filters
摘要:
Particle methods are popular computational tools for Bayesian inference in nonlinear non-Gaussian state space models. For this class of models, we present two particle algorithms to compute the score vector and observed information matrix recursively. The first algorithm is implemented with computational complexity O(N) and the second with complexity O(N-2), where N is the number of particles. Although cheaper, the performance of the O(N) method degrades quickly, as it relies on the approximation of a sequence of probability distributions whose dimension increases linearly with time. In particular, even under strong mixing assumptions, the variance of the estimates computed with the O(N) method increases at least quadratically in time. The more expensive O(N-2) method relies on a nonstandard particle implementation and does not suffer from this rapid degradation. It is shown how both methods can be used to perform batch and recursive parameter estimation.
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