Parameter Estimation in Hidden Markov Models With Intractable Likelihoods Using Sequential Monte Carlo

Citation
Yıldırım, Sinan et al., Parameter Estimation in Hidden Markov Models With Intractable Likelihoods Using Sequential Monte Carlo, Journal of computational and graphical statistics , 24(3), 2015, pp. 846-865
ISSN journal
10618600
Volume
24
Issue
3
Year of publication
2015
Pages
846 - 865
Database
ACNP
SICI code
Abstract
We propose sequential Monte Carlo-based algorithms for maximum likelihood estimation of the static parameters in hidden Markov models with an intractable likelihood using ideas from approximate Bayesian computation. The static parameter estimation algorithms are gradient-based and cover both offline and online estimation. We demonstrate their performance by estimating the parameters of three intractable models, namely the α-stable distribution, g-and-k distribution, and the stochastic volatility model with α-stable returns, using both real and synthetic data.