Standard methods for maximum likelihood parameter estimation in latent variable models rely on the Expectation-Maximization algorithm and its Monte Carlo variants. Our approach is different and motivated by similar considerations to simulated annealing; that is we build a sequence of artificial distributions whose support concentrates itself on the set of maximum likelihood estimates. We sample from these distributions using a sequential Monte Carlo approach. We demonstrate state-of-the-art performance for several applications of the proposed approach. © 2007 Springer Science+Business Media, LLC
I present a novel method for maximum likelihood parameter estimation in nonlinear/non-Gaussian state...
Markov chain Monte Carlo and sequential Monte Carlo methods have emerged as the two main tools to sa...
Online variants of the Expectation Maximization (EM) algorithm have recently been proposed to perfor...
Standard methods for maximum likelihood parameter estimation in latent variable models rely on the ...
We present a sequential Monte Carlo (SMC) method for maximum likelihood (ML) parameter estimation in...
This paper is made available online in accordance with publisher policies. Please scroll down to vie...
We present a sequential Monte Carlo (SMC) method for maximum likelihood (ML) parameter estimation i...
Particle filtering – perhaps more properly named Sequential Monte Carlo – approaches have a strong p...
Latent variable models have been playing a central role in psychometrics and related fields. In many...
Time series models are used to characterise uncertainty in many real-world dynamical phenomena. A ti...
AbstractWe study the asymptotic performance of approximate maximum likelihood estimators for state s...
We study the asymptotic performance of approximate maximum likelihood estimators for state space mod...
This paper is concerned with the parameter estimation of a relatively general class of nonlinear dyn...
Sequential Monte Carlo (SMC) methods are studied to deal with multivariate optimization problems ari...
This thesis provides novel methodological and theoretical contributions to the area of Monte Carlo m...
I present a novel method for maximum likelihood parameter estimation in nonlinear/non-Gaussian state...
Markov chain Monte Carlo and sequential Monte Carlo methods have emerged as the two main tools to sa...
Online variants of the Expectation Maximization (EM) algorithm have recently been proposed to perfor...
Standard methods for maximum likelihood parameter estimation in latent variable models rely on the ...
We present a sequential Monte Carlo (SMC) method for maximum likelihood (ML) parameter estimation in...
This paper is made available online in accordance with publisher policies. Please scroll down to vie...
We present a sequential Monte Carlo (SMC) method for maximum likelihood (ML) parameter estimation i...
Particle filtering – perhaps more properly named Sequential Monte Carlo – approaches have a strong p...
Latent variable models have been playing a central role in psychometrics and related fields. In many...
Time series models are used to characterise uncertainty in many real-world dynamical phenomena. A ti...
AbstractWe study the asymptotic performance of approximate maximum likelihood estimators for state s...
We study the asymptotic performance of approximate maximum likelihood estimators for state space mod...
This paper is concerned with the parameter estimation of a relatively general class of nonlinear dyn...
Sequential Monte Carlo (SMC) methods are studied to deal with multivariate optimization problems ari...
This thesis provides novel methodological and theoretical contributions to the area of Monte Carlo m...
I present a novel method for maximum likelihood parameter estimation in nonlinear/non-Gaussian state...
Markov chain Monte Carlo and sequential Monte Carlo methods have emerged as the two main tools to sa...
Online variants of the Expectation Maximization (EM) algorithm have recently been proposed to perfor...