We consider the problem of filtering an unseen Markov chain from noisy observations, in the presence of uncertainty regarding the parameters of the processes involved. Using the theory of nonlinear expectations, we describe the uncertainty in terms of a penalty function, which can be propagated forward in time in the place of the filter. We also investigate a simple control problem in this context
We consider continuous-time models where the observed process depends on an unobserved jump Markov P...
This paper develops a connection between the asymptotic stability of nonlinear filters and a notion ...
This paper develops a connection between the asymptotic stability of nonlinear filters and a notion ...
We consider the filtering of continuous-time finite-state hidden Markov models, where the rate and o...
We consider a Hidden Markov Model (HMM) where the integrated continuous-time Markov chain can be obs...
A discrete state and time Markov chain is observed through a finite state function which is subject ...
In standard treatments of stochastic filtering one first requires the various parameters of the mode...
The thesis focuses on filtering and prediction of discrete time processes. We begin by introducing t...
Abstract The forgetting of the initial distribution for discrete Hidden Markov Models (HMM) is addre...
In this paper we study various properties of finite stochastic systems or hidden Markov chains as th...
In this paper, we address the problem of risk-sensitive filtering and smoothing for discrete-time Hi...
A discrete-time control problem of a finite-state hidden Markov chain partially observed in a fracti...
The problem of discrete universal filtering, in which the components of a discrete signal emitted by...
In this paper, we address the problem of risk-sensitive filtering and smoothing for discrete-time Hi...
A discrete-time control problem of a finite-state hidden Markov chain partially observed in a fracti...
We consider continuous-time models where the observed process depends on an unobserved jump Markov P...
This paper develops a connection between the asymptotic stability of nonlinear filters and a notion ...
This paper develops a connection between the asymptotic stability of nonlinear filters and a notion ...
We consider the filtering of continuous-time finite-state hidden Markov models, where the rate and o...
We consider a Hidden Markov Model (HMM) where the integrated continuous-time Markov chain can be obs...
A discrete state and time Markov chain is observed through a finite state function which is subject ...
In standard treatments of stochastic filtering one first requires the various parameters of the mode...
The thesis focuses on filtering and prediction of discrete time processes. We begin by introducing t...
Abstract The forgetting of the initial distribution for discrete Hidden Markov Models (HMM) is addre...
In this paper we study various properties of finite stochastic systems or hidden Markov chains as th...
In this paper, we address the problem of risk-sensitive filtering and smoothing for discrete-time Hi...
A discrete-time control problem of a finite-state hidden Markov chain partially observed in a fracti...
The problem of discrete universal filtering, in which the components of a discrete signal emitted by...
In this paper, we address the problem of risk-sensitive filtering and smoothing for discrete-time Hi...
A discrete-time control problem of a finite-state hidden Markov chain partially observed in a fracti...
We consider continuous-time models where the observed process depends on an unobserved jump Markov P...
This paper develops a connection between the asymptotic stability of nonlinear filters and a notion ...
This paper develops a connection between the asymptotic stability of nonlinear filters and a notion ...