International audienceStatistical smoothing in general non-linear non-Gaussian systems is a challenging problem. A new smoothing method based on approximating the original system by a recent switching model has been introduced. Such switching model allows fast and optimal smoothing. The new algorithm is validated through an application on stochastic volatility and dynamic beta models. Simulation experiments indicate its remarkable performances and low processing cost. In practice, the proposed approach can overcome the limitations of particle smoothing methods and may apply where their usage is discarded
We propose a principled algorithm for robust Bayesian filtering and smoothing in nonlinear stochasti...
In state-space models, smoothing refers to the task of estimating a latent stochastic process given ...
Dynamic regression or state space models provide a flexible framework for analyzing non-Gaussian tim...
International audienceWe consider here the problem of statistical ltering and smoothing in nonlinear...
International audienceWe consider the problem of statistical smoothing in nonlin-ear non-Gaussian sy...
We consider approximate inference in a class of switching linear Gaussian State Space models which i...
International audienceWe consider the problem of optimal statistical filtering in general non-linear...
We introduce a method for approximate smoothed inference in a class of switching linear dynamical sy...
We present a new method for approximate inference in Switching linear Gaussian State Space Models (a...
International audience—We consider a general triplet Markov Gaussian linear system (X, R, Y), where ...
The aim of the paper is twofold. The first aim is to present a mini tutorial on « pairwise Markov mo...
Abstract—We propose a principled algorithm for robust Bayesian filtering and smoothing in nonlinear ...
We introduce a method for approximate smoothed inference in a class of switching linear dynamical sy...
Les travaux présentés dans cette thèse portent sur l'analyse et l'application de méthodes de Monte C...
© Copyright 2005 IEEEIn this article we compute the exact smoothing algorithm for discrete-time Gaus...
We propose a principled algorithm for robust Bayesian filtering and smoothing in nonlinear stochasti...
In state-space models, smoothing refers to the task of estimating a latent stochastic process given ...
Dynamic regression or state space models provide a flexible framework for analyzing non-Gaussian tim...
International audienceWe consider here the problem of statistical ltering and smoothing in nonlinear...
International audienceWe consider the problem of statistical smoothing in nonlin-ear non-Gaussian sy...
We consider approximate inference in a class of switching linear Gaussian State Space models which i...
International audienceWe consider the problem of optimal statistical filtering in general non-linear...
We introduce a method for approximate smoothed inference in a class of switching linear dynamical sy...
We present a new method for approximate inference in Switching linear Gaussian State Space Models (a...
International audience—We consider a general triplet Markov Gaussian linear system (X, R, Y), where ...
The aim of the paper is twofold. The first aim is to present a mini tutorial on « pairwise Markov mo...
Abstract—We propose a principled algorithm for robust Bayesian filtering and smoothing in nonlinear ...
We introduce a method for approximate smoothed inference in a class of switching linear dynamical sy...
Les travaux présentés dans cette thèse portent sur l'analyse et l'application de méthodes de Monte C...
© Copyright 2005 IEEEIn this article we compute the exact smoothing algorithm for discrete-time Gaus...
We propose a principled algorithm for robust Bayesian filtering and smoothing in nonlinear stochasti...
In state-space models, smoothing refers to the task of estimating a latent stochastic process given ...
Dynamic regression or state space models provide a flexible framework for analyzing non-Gaussian tim...