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Limit theorems for processes such as the Markov branching process

Published online by Cambridge University Press:  14 July 2016

Andrew D. Barbour*
Affiliation:
University of Cambridge

Abstract

Let X(t) be a continuous time Markov process on the integers such that, if σ is a time at which X makes a jump, X(σ)– X(σ–) is distributed independently of X(σ–), and has finite mean μ and variance. Let q(j) denote the residence time parameter for the state j. If tn denotes the time of the nth jump and XnX(tb), it is easy to deduce limit theorems for from those for sums of independent identically distributed random variables. In this paper, it is shown how, for μ > 0 and for suitable q(·), these theorems can be translated into limit theorems for X(t), by using the continuous mapping theorem.

Type
Research Papers
Copyright
Copyright © Applied Probability Trust 1975 

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References

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