| Literature DB >> 28860681 |
Dao Nguyen1, Edward L Ionides1.
Abstract
Simulation-based inference for partially observed stochastic dynamic models is currently receiving much attention due to the fact that direct computation of the likelihood is not possible in many practical situations. Iterated filtering methodologies enable maximization of the likelihood function using simulation-based sequential Monte Carlo filters. Doucet et al. (2013) developed an approximation for the first and second derivatives of the log likelihood via simulation-based sequential Monte Carlo smoothing and proved that the approximation has some attractive theoretical properties. We investigated an iterated smoothing algorithm carrying out likelihood maximization using these derivative approximations. Further, we developed a new iterated smoothing algorithm, using a modification of these derivative estimates, for which we establish both theoretical results and effective practical performance. On benchmark computational challenges, this method beat the first-order iterated filtering algorithm. The method's performance was comparable to a recently developed iterated filtering algorithm based on an iterated Bayes map. Our iterated smoothing algorithm and its theoretical justification provide new directions for future developments in simulation-based inference for latent variable models such as partially observed Markov process models.Entities:
Keywords: Hidden Markov model; Iterated smoothing; Parameter estimation; Sequential Monte Carlo; State space model
Year: 2016 PMID: 28860681 PMCID: PMC5573285 DOI: 10.1007/s11222-016-9711-9
Source DB: PubMed Journal: Stat Comput ISSN: 0960-3174 Impact factor: 2.559