Herein, we consider direct Markov chain approximations to the Duncan-Mortensen-Zakai equations for nonlinear filtering problems on regular, bounded domains. For clarity of presentation, we restrict our attention to reflecting diffusion signals with symmetrizable generators. Our Markov chains are constructed by employing a wide band observation noise approximation, dividing the signal state space into cells, and utilizing an empirical measure process estimation. The upshot of our approximation is an efficient, effective algorithm for implementing such filtering problems. We prove that our approximations converge to the desired conditional distribution of the signal given the observation. Moreover, we use simulations to compare computational ...
Paper WA2―5International audienceWe consider particle filters in a model where the hidden states and...
Diffusion processes observed partially, typically at discrete timepoints and possibly with observati...
Herein, we analyze an efficient branching particle method for asymp-totic solutions to a class of co...
AbstractHerein, we consider direct Markov chain approximations to the Duncan–Mortensen–Zakai equatio...
AbstractThe non-linear filtering problem consists in computing the conditional distributions of a Ma...
The non linear filtering problem consists in computing the conditional distributions of a Markov sig...
We introduce a novel particle filter scheme for a class of partially observed multivariate diffusion...
In this paper, we consider the filtering of diffusion processes observed in non-Gaussian noise, when...
We introduce a novel particle filter scheme for a class of partially observed multivariate diffusion...
We consider the problem of optimal filtering of two dimensional diffusion process measured in a nois...
: We propose to study the sensitivity of the optimal filter to its initialization, by looking at the...
A class of discrete‐time random processes arising in engineering and econometrics applications consi...
This thesis is concerned with the design and analysis of particle-based algorithms for two problems:...
Paper WA2―5International audienceWe consider particle filters in a model where the hidden states and...
Paper WA2―5International audienceWe consider particle filters in a model where the hidden states and...
Paper WA2―5International audienceWe consider particle filters in a model where the hidden states and...
Diffusion processes observed partially, typically at discrete timepoints and possibly with observati...
Herein, we analyze an efficient branching particle method for asymp-totic solutions to a class of co...
AbstractHerein, we consider direct Markov chain approximations to the Duncan–Mortensen–Zakai equatio...
AbstractThe non-linear filtering problem consists in computing the conditional distributions of a Ma...
The non linear filtering problem consists in computing the conditional distributions of a Markov sig...
We introduce a novel particle filter scheme for a class of partially observed multivariate diffusion...
In this paper, we consider the filtering of diffusion processes observed in non-Gaussian noise, when...
We introduce a novel particle filter scheme for a class of partially observed multivariate diffusion...
We consider the problem of optimal filtering of two dimensional diffusion process measured in a nois...
: We propose to study the sensitivity of the optimal filter to its initialization, by looking at the...
A class of discrete‐time random processes arising in engineering and econometrics applications consi...
This thesis is concerned with the design and analysis of particle-based algorithms for two problems:...
Paper WA2―5International audienceWe consider particle filters in a model where the hidden states and...
Paper WA2―5International audienceWe consider particle filters in a model where the hidden states and...
Paper WA2―5International audienceWe consider particle filters in a model where the hidden states and...
Diffusion processes observed partially, typically at discrete timepoints and possibly with observati...
Herein, we analyze an efficient branching particle method for asymp-totic solutions to a class of co...