BAYESIAN-ANALYSIS OF STOCHASTIC VOLATILITY MODELS

被引:645
作者
JACQUIER, E [1 ]
POLSON, NG [1 ]
ROSSI, PE [1 ]
机构
[1] UNIV CHICAGO,GRAD SCH BUSINESS,CHICAGO,IL 60637
关键词
BAYESIAN INFERENCE; MARKOV-CHAIN MONTE-CARLO; METHOD OF MOMENTS; NONLINEAR FILTERING; QUASI-MAXIMUM LIKELIHOOD; STOCHASTIC VOLATILITY;
D O I
10.2307/1392199
中图分类号
F [经济];
学科分类号
02 ;
摘要
New techniques for the analysis of stochastic volatility models in which the logarithm of conditional variance follows an autoregressive model are developed. A cyclic Metropolis algorithm is used to construct a Markov-chain simulation tool. Simulations from this Markov chain converge in distribution to draws from the posterior distribution enabling exact finite-sample inference. The exact solution to the filtering/smoothing problem of inferring about the unobserved variance states is a by-product of our Markov-chain method. In addition, multistep-ahead predictive densities can be constructed that reflect both inherent model variability and parameter uncertainty. We illustrate our method by analyzing both daily and weekly data on stock returns and exchange rates. Sampling experiments are conducted to compare the performance of Bayes estimators to method of moments and quasi-maximum likelihood estimators proposed in the literature. In both parameters estimation and filtering, the Bayes estimators outperform these other approaches.
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页码:371 / 389
页数:19
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