International audienceWe consider the problem of optimal statistical filtering in general non-linear non-Gaussian Markov dynamic systems. The novelty of the proposed approach consists in approximating the non-linear system by a recent Markov switching process, in which one can perform exact and optimal filtering with a linear time complexity. All we need to assume is that the system is stationary (or asymptotically stationary), and that one can sample its realizations. We evaluate our method using two stochastic volatility models and results show its efficiency
In this paper, we study the problem of estimating a Markov chain X (signal) from its noisy partial i...
In this paper, we develop finite-time horizon causal filters for general processes taking values in ...
International audienceStatistical smoothing in general non-linear non-Gaussian systems is a challeng...
International audienceWe consider the problem of optimal statistical filtering in general non-linear...
International audienceWe consider the problem of optimal statistical filtering in nonlinear and non-...
We consider the problem of optimal statistical filtering in non-linear and non-Gaussian systems. The...
International audienceWe consider the problem of statistical smoothing in nonlin-ear non-Gaussian sy...
This paper considers the problem of state estimation for discrete-time systems whose dynamics switch...
A class of discrete‐time random processes arising in engineering and econometrics applications consi...
International audienceWe consider here the problem of statistical ltering and smoothing in nonlinear...
Abstract—We consider a general triplet Markov Gaussian linear system (X,R,Y), where X is an hidden c...
In this paper the suboptimal polynomial approach is followed to solve the state estimation problem f...
We introduce a new methodology to construct a Gaussian mixture approximation to the true filter dens...
Nous traitons du problème de filtrage statistique optimal dans des systèmes à sauts. Nous considéron...
This paper deals with the filtering problem for a general class of nonlinear time-delay systems with...
In this paper, we study the problem of estimating a Markov chain X (signal) from its noisy partial i...
In this paper, we develop finite-time horizon causal filters for general processes taking values in ...
International audienceStatistical smoothing in general non-linear non-Gaussian systems is a challeng...
International audienceWe consider the problem of optimal statistical filtering in general non-linear...
International audienceWe consider the problem of optimal statistical filtering in nonlinear and non-...
We consider the problem of optimal statistical filtering in non-linear and non-Gaussian systems. The...
International audienceWe consider the problem of statistical smoothing in nonlin-ear non-Gaussian sy...
This paper considers the problem of state estimation for discrete-time systems whose dynamics switch...
A class of discrete‐time random processes arising in engineering and econometrics applications consi...
International audienceWe consider here the problem of statistical ltering and smoothing in nonlinear...
Abstract—We consider a general triplet Markov Gaussian linear system (X,R,Y), where X is an hidden c...
In this paper the suboptimal polynomial approach is followed to solve the state estimation problem f...
We introduce a new methodology to construct a Gaussian mixture approximation to the true filter dens...
Nous traitons du problème de filtrage statistique optimal dans des systèmes à sauts. Nous considéron...
This paper deals with the filtering problem for a general class of nonlinear time-delay systems with...
In this paper, we study the problem of estimating a Markov chain X (signal) from its noisy partial i...
In this paper, we develop finite-time horizon causal filters for general processes taking values in ...
International audienceStatistical smoothing in general non-linear non-Gaussian systems is a challeng...