On the auxiliary particle filter
Statistics Theory
2007-09-24 v1 Statistics Theory
Abstract
In this article we study asymptotic properties of weighted samples produced by the auxiliary particle filter (APF) proposed by pitt and shephard (1999). Besides establishing a central limit theorem (CLT) for smoothed particle estimates, we also derive bounds on the Lp error and bias of the same for a finite particle sample size. By examining the recursive formula for the asymptotic variance of the CLT we identify first-stage importance weights for which the increase of asymptotic variance at a single iteration of the algorithm is minimal. In the light of these findings, we discuss and demonstrate on several examples how the APF algorithm can be improved.
Cite
@article{arxiv.0709.3448,
title = {On the auxiliary particle filter},
author = {Randal Douc and Eric Moulines and Jimmy Olsson},
journal= {arXiv preprint arXiv:0709.3448},
year = {2007}
}
Comments
26 pages