Bayesian analysis of nonlinear and non-Gaussian state space models via multiple-try sampling methods

被引:0
作者
Mike K. P. So
机构
[1] The Hong Kong University of Science & Technology,Department of Information and Systems Management, School of Business and Management
来源
Statistics and Computing | 2006年 / 16卷
关键词
Adaptive direction sampling; Blocking; Kalman filter; Markov chain Monte Carlo methods; Multiple mode; Posterior mode direction sampling; Quadratic hill-climbing;
D O I
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中图分类号
学科分类号
摘要
We develop in this paper three multiple-try blocking schemes for Bayesian analysis of nonlinear and non-Gaussian state space models. To reduce the correlations between successive iterates and to avoid getting trapped in a local maximum, we construct Markov chains by drawing state variables in blocks with multiple trial points. The first and second methods adopt autoregressive and independent kernels to produce the trial points, while the third method uses samples along suitable directions. Using the time series structure of the state space models, the three sampling schemes can be implemented efficiently. In our multimodal examples, the three multiple-try samplers are able to generate the desired posterior sample, whereas existing methods fail to do so.
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页码:125 / 141
页数:16
相关论文
共 49 条
[1]  
Andrade Netto M. L.(1978)On the optimal and suboptimal nonlinear filtering problem for discrete-time systems IEEE Transactions on Automatic Control 23 1062-67
[2]  
Gimeno L.(1995)Bayesian computation and stochastic systems (with discussion) Statistical Science 10 3-66
[3]  
Mendes M. J.(1992)A Monte Carlo approach to nonnormal and nonlinear state-space modeling Journal of the American Statistical Association 87 493-500
[4]  
Besag J.(1994)On Gibbs sampling for state space models Biometrika 81 541-53
[5]  
Green P.(1995)The simulation smoother for time series models Biometrika 82 339-50
[6]  
Higon D.(2000)Time series analysis of non-Gaussian observations based on state space models from both classical and Bayesian perspectives Journal of the Royal Statistical Society B 62 3-29
[7]  
Mengersen K.(2000)Efficient Bayesian inference for dynamic mixture models Journal of the American Statistical Association 95 819-828
[8]  
Carlin B. P.(2000)On Markov chain Monte Carlo methods for nonlinear and non-Gaussian state-space models Communications in Statistics–-Simulation and Computation 28 867-94
[9]  
Polson N. G.(1994)Adaptive direction sampling The Statistician 43 179-89
[10]  
Stoffer D.(2004)Monte Carlo smoothing for nonlinear time series Journal of the American Statistical Association 99 156-168