In the filtering problem considered here, the state process is a continuous time random walk and the observation process is an increasing process depending deterministically on the trajectory of the state process. An explicit construction of the filter is given. This construction is then applied to a suitable approximation of a Brownian motion and to a rescaled MIM/I queueing model. In both these cases, the sequence of the observation processes converges to a local time, and a convergence result for the respective filters is given. The case of a queueing model when the observation is the idle time is also considered. (C) 2006 Elsevier B.V. All rights reserved
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The Semi-Markov property of Continuous Time Random Walks (CTRWs) and their limit processes is utiliz...
In the filtering problem considered here, the state process is a continuous time random walk and the...
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We consider a Hidden Markov Model (HMM) where the integrated continuous-time Markov chain can be obs...
AbstractA result of Godambe [1] on optimal combination of estimating functions for discrete time sto...
Let X be a continuous-time Markov chain in a finite set I, let h be a mapping of I onto another set ...
A filtering problem is considered in the case when the state process is a M/M/1 queue Qt and the obs...
A discrete state and time Markov chain is observed through a finite state function which is subject ...
Continuous Time Random Walks (CTRWs) provide stochastic models for the random movement of any entity...
The thesis focuses on filtering and prediction of discrete time processes. We begin by introducing t...
We consider a filtering problem when the state process is a reflected Brownian motion X-t and the ob...
Abstract. We present here an alternative view of the continuous time filtering problem, namely the p...
The ability to analyse, interpret and make inferences about evolving dynamical systems is of great i...
AbstractIn this paper partially observed jump processes are considered and optimal filtering equatio...
The Semi-Markov property of Continuous Time Random Walks (CTRWs) and their limit processes is utiliz...