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Estimating the transition matrix of a Markov chain observed at random times

Authors :
Barsotti, Flavia
De Castro, Yohann
Espinasse, Thibault
Rochet, Paul
Publication Year :
2014

Abstract

In this paper we develop a statistical estimation technique to recover the transition kernel $P$ of a Markov chain $X=(X_m)_{m \in \mathbb N}$ in presence of censored data. We consider the situation where only a sub-sequence of $X$ is available and the time gaps between the observations are iid random variables. Under the assumption that neither the time gaps nor their distribution are known, we provide an estimation method which applies when some transitions in the initial Markov chain $X$ are known to be unfeasible. A consistent estimator of $P$ is derived in closed form as a solution of a minimization problem. The asymptotic performance of the estimator is then discussed in theory and through numerical simulations.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1405.0384
Document Type :
Working Paper