Bayesian Analysis of Stochastic Volatility Models
Cornell University · University of Chicago
Abstract
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 coverage 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…
Citation impact
- FWCI
- 76.74
- Percentile
- 100%
- References
- 34
Authors
3Topics & keywords
- Stochastic volatility
- Markov chain
- Estimator
- Mathematics
- Autoregressive model
- Econometrics
- Markov chain Monte Carlo
- Bayes factor