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Computing the conditional stationary distribution in Markov chains of level-dependent M/G/1-type
Authors:Masatoshi Kimura  Tetsuya Takine
Affiliation:Department of Information and Communications Technology, Graduate School of Engineering, Osaka University, Suita, Japan
Abstract:
This paper considers the computation of the conditional stationary distribution in Markov chains of level-dependent M/G/1-type, given that the level is not greater than a predefined threshold. This problem has been studied recently and a computational algorithm is proposed under the assumption that matrices representing downward jumps are nonsingular. We first show that this assumption can be eliminated in a general setting of Markov chains of level-dependent G/G/1-type. Next we develop a computational algorithm for the conditional stationary distribution in Markov chains of level-dependent M/G/1-type, by modifying the above-mentioned algorithm slightly. In principle, our algorithm is applicable to any Markov chain of level-dependent M/G/1-type, if the Markov chain is irreducible and positive-recurrent. Furthermore, as an input to the algorithm, we can set an error bound for the computed conditional distribution, which is a notable feature of our algorithm. Some numerical examples are also provided.
Keywords:Computational algorithm  conditional stationary distribution  error bound  level dependence  Markov chains of M/G/1-type
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