Nonejad, Nima (2014): Particle Gibbs with Ancestor Sampling Methods for Unobserved Component Time Series Models with Heavy Tails, Serial Dependence and Structural Breaks.
Preview |
PDF
MPRA_paper_55664.pdf Download (493kB) | Preview |
Abstract
Particle Gibbs with ancestor sampling (PG-AS) is a new tool in the family of sequential Monte Carlo methods. We apply PG-AS to the challenging class of unobserved component time series models and demonstrate its flexibility under different circumstances. We also combine discrete structural breaks within the unobserved component model framework. We do this by modeling and forecasting time series characteristics of postwar US inflation using a long memory autoregressive fractionally integrated moving average model with stochastic volatility where we allow for structural breaks in the level, long and short memory parameters contemporaneously with breaks in the level, persistence and the conditional volatility of the volatility of inflation.
Item Type: | MPRA Paper |
---|---|
Original Title: | Particle Gibbs with Ancestor Sampling Methods for Unobserved Component Time Series Models with Heavy Tails, Serial Dependence and Structural Breaks |
Language: | English |
Keywords: | Ancestor sampling, Bayes, Particle filtering, Structural breaks |
Subjects: | C - Mathematical and Quantitative Methods > C1 - Econometric and Statistical Methods and Methodology: General > C11 - Bayesian Analysis: General C - Mathematical and Quantitative Methods > C2 - Single Equation Models ; Single Variables > C22 - Time-Series Models ; Dynamic Quantile Regressions ; Dynamic Treatment Effect Models ; Diffusion Processes C - Mathematical and Quantitative Methods > C5 - Econometric Modeling > C52 - Model Evaluation, Validation, and Selection C - Mathematical and Quantitative Methods > C6 - Mathematical Methods ; Programming Models ; Mathematical and Simulation Modeling > C63 - Computational Techniques ; Simulation Modeling |
Item ID: | 55664 |
Depositing User: | Mr Nima Nonejad |
Date Deposited: | 02 May 2014 07:09 |
Last Modified: | 26 Sep 2019 10:06 |
References: | Andrieu, C., and A. Doucet. 2002. “Particle filtering for partially observed Gaussian state space models.” Journal of the Royal Statistical Society B 64(4): 827-836. Andrieu, C., A. Doucet, and R. Holenstein. 2010. “Particle Markov chain Monte Carlo methods (with discussion).” Journal of the Royal Statistical Society B 72(3): 1-33. Bos, C. S., S. J. Koopman, and M. Ooms. 2012. “Long memory with stochastic variance model: A recursive analysis for U.S. inflation.” Computational Statistics and Data Analysis, forthcoming. Chan, J. 2013. “Moving Average Stochastic Volatility Models with Application to Inflation Forecast.” Journal of Econometrics 176(2): 162-172. Chan, J. 2014. “The Stochastic Volatility in Mean Model with Time-Varying Parameters: An Application to Inflation Modeling.” Working paper, Research School of Economics, Australian National University. Chan, J., and C. Hsiao. 2013. “Estimation of Stochastic Volatility Models with Heavy Tails and Serial Dependence.” in Bayesian Inference in the Social Sciences. John Wiley & Sons, New york. Chan, N. H., and W. Palma. 1998. “State space modeling of long-memory processes.” Annals of Statistics 26(2): 719-740. Chib, S., E. Greenberg. 1995. “Understanding the Metropolis-Hastings Algorithm.” The American Statistician 49(4): 327-335. Chib, S. 1998. “Estimation and Comparison of Multiple Change-Point Models.” Journal of Econometrics 86(2): 221-241. Chib, S., F. Nadari, and N. Shephard. 2002. “Markov chain Monte Carlo methods for stochastic volatility models.” Journal of Econometrics 108(2): 281-316. Creal, D. 2012. “A survey of sequential Monte Carlo methods for economics and finance.” Econometric Reviews 31(3): 245-296. Doucet, A., S. J. Godsill, and C. Andrieu. 2000. “On sequential Monte Carlo sampling methods for Bayesian filtering.” Statistics and Computing 10(3): 197-208. Doucet, A., and A. Johansen. 2011. “A tutorial on particle filtering and smoothing: Fifteen years later.” in The Oxford Handbook of Nonlinear Filtering. D. Crisan and B. Rozovsky, Eds. Oxford University Press. Gelfand, A., and D. Dey. 1994. “Bayesian Model Choice: Asymptotics and Exact Calculations.” Journal of the Royal Statistical Society B 56(3): 501-514. Geweke, J. 2005. Contemporary Bayesian Econometrics and Statistics. Wiley. Gordon, S., and J. Maheu. 2008. “Learning, Forecasting and Structural Breaks.” Journal of Applied Econometrics 23(5): 553-583. Kass, R. E., and A. E. Raftery. 1995. “Bayes Factors.” Journal of the American Statistical Association 90: 773-795. Kim, C. J., and C. R. Nelson. 1999. State Space Models with Regime Switching Classical and Gibbs Sampling Approaches with Applications. MIT Press. Kim, C. J., and C. R. Nelson. 1999. “Has the U.S. Economy Become More Stable? A Bayesian Approach Based on a Markov-Switching Model of Business Cycle.” Review of Economics and Statistics 81(4): 608-616. Kim, C. J., C. R. Nelson, and J. Piger. 2004. “The Less Volatile U.S. Economy: A Bayesian Investigation of Timing, Breadth, and Potential Explanations.” Journal of Business and Economic Statistics 22(1): 80-93. Kim, S., N. Shephard, and S. Chib. 1998. “Stochastic Volatility: Likelihood Inference and Comparison with ARCH Models.” Review of Economic Studies 65(3): 361-393. Koop, G. 2003. Bayesian Econometrics. John Wiley & Sons Ltd. Koopman, S. J., and E. H. Uspensky. 2002. “The stochastic volatility in mean model: empirical evidence from international stock markets.” Journal of Applied Econometrics 17(6): 667-689. Lindsten, F., M. I. Jordan, and T. B. Schön. 2012. “Ancestor Sampling for Particle Gibbs.” Advances in Neural Information Processing Systems (NIPS) 25: 2600-2608. Lindsten, F., and T. B. Schön. 2013. “Backward Simulation Methods for Monte Carlo Statistical Inference.” Foundations and Trends in Machine Learning 6(1): 1-14. Liu, C., and J. Maheu. 2008. “Are There Structural Breaks in Realized Volatility?” Journal of Financial Econometrics 6(3): 326-360. Marcellino, M., J. H. Stock, and M. W. Watson. 2005. “A Comparison of Direct and Iterated AR Methods for Forecasting Macroeconomic Series h-Steps Ahead.” Journal of Econometrics 135(1-2): 499-526. Pesaran, H., D. Pettenuzzo, and A. Timmermann. 2006. “Forecasting Time Series Subject to Multiple Structural Breaks.” Review of Economic Studies 73(4): 1057-1084. Raggi, D., and S. Bordignon. 2012. “Long Memory and Nonlinearities in Realized Volatility: A Markov Switching Approach.” Computational Statistics and Data Analysis 56(11): 3730-3742. Sims, C. A., D. F. Waggoner, and T. Zha. 2008. “Methods for Inference in Large Multiple-Equation Markov-Switching Models.” Journal of Econometrics 146(2): 255-274. Spiegelhalter, D., N. Best, B. Carlin, and A. van der Linde. 2002. “Bayesian Measures of Model Complexity and Fit (with comments)”. Journal of the Royal Statistical Society B 64(4): 583-639. Stock, J. H., and M. W. Watson. 2007. “Why Has U.S. Inflation Become Harder to Forecast?” Journal of Money, Credit, and Banking 39(1): 3-34. Zellner, A. 1986. “Bayesian Estimation and Prediction Using Asymmetric Loss Functions.” Journal of the American Statistical Association 81: 446-451. |
URI: | https://mpra.ub.uni-muenchen.de/id/eprint/55664 |