The Auxiliary Particle Filter (APF) introduced by Pitt and Shephard (1999) is a very popular alternative to Sequential Importance Sampling and Resampling (SISR) algorithms to perform inference in state-space models. We propose a novel interpretation of the APF as an SISR algorithm. This interpretation allows us to present simple guidelines to ensure good performance of the APF and the first convergence results for this algorithm. Additionally, we show that, contrary to popular belief, the asymptotic variance of APF-based estimators is not always smaller than those of the corresponding SISR estimators – even in the ‘perfect adaptation’ scenario
Optimal Bayesian multi-target filtering is, in general, computationally impractical owing to the hig...
In this paper we discuss new adaptive proposal strategies for sequential Monte Carlo algorithms—also...
In this paper we introduce a novel sequential Monte Carlo technique, which is based on the family of...
26 pagesIn this article we study asymptotic properties of weighted samples produced by the auxiliary...
The auxiliary particle filter (APF) is a popular algorithm for the Monte Carlo approximation of the ...
Abstract. In this article we study asymptotic properties of weighted samples produced by the auxilia...
The Fully Adapted Auxiliary Particle Filter (FA-APF) is a well known Sequential Monte Carlo (SMC) al...
This article analyses the recently suggested particle approach to filtering time series. We suggest ...
We present an offline, iterated particle filter to facilitate statistical inference in general state...
The novel research work presented in this thesis consists of an offline, iterated particle filter to...
The Particle Filter (PF) method is becoming increasingly popular. Is often used especially for compl...
This contribution is devoted to the comparison of various resampling approaches that have been propo...
We consider particle filters with weakly informative observations (or `potentials') relative to the ...
We investigate the performance of a class of particle filters (PFs) that can automatically tune thei...
Resampling is a critical procedure that is of both theoretical and practical significance for effici...
Optimal Bayesian multi-target filtering is, in general, computationally impractical owing to the hig...
In this paper we discuss new adaptive proposal strategies for sequential Monte Carlo algorithms—also...
In this paper we introduce a novel sequential Monte Carlo technique, which is based on the family of...
26 pagesIn this article we study asymptotic properties of weighted samples produced by the auxiliary...
The auxiliary particle filter (APF) is a popular algorithm for the Monte Carlo approximation of the ...
Abstract. In this article we study asymptotic properties of weighted samples produced by the auxilia...
The Fully Adapted Auxiliary Particle Filter (FA-APF) is a well known Sequential Monte Carlo (SMC) al...
This article analyses the recently suggested particle approach to filtering time series. We suggest ...
We present an offline, iterated particle filter to facilitate statistical inference in general state...
The novel research work presented in this thesis consists of an offline, iterated particle filter to...
The Particle Filter (PF) method is becoming increasingly popular. Is often used especially for compl...
This contribution is devoted to the comparison of various resampling approaches that have been propo...
We consider particle filters with weakly informative observations (or `potentials') relative to the ...
We investigate the performance of a class of particle filters (PFs) that can automatically tune thei...
Resampling is a critical procedure that is of both theoretical and practical significance for effici...
Optimal Bayesian multi-target filtering is, in general, computationally impractical owing to the hig...
In this paper we discuss new adaptive proposal strategies for sequential Monte Carlo algorithms—also...
In this paper we introduce a novel sequential Monte Carlo technique, which is based on the family of...