Translated Poisson Approximation for Markov Chains
Journal article, 2006

The paper is concerned with approximating the distribution of a sum W of integer valued random variables Y i , 1 ≤ i ≤ n, whose distributions depend on the state of an underlying Markov chain X. The approximation is in terms of a translated Poisson distribution, with mean and variance chosen to be close to those of W, and the error is measured with respect to the total variation norm. Error bounds comparable to those found for normal approximation with respect to the weaker Kolmogorov distance are established, provided that the distribution of the sum of the Y i ’s between the successive visits of X to a reference state is aperiodic. Without this assumption, approximation in total variation cannot be expected to be good.

Author

A.D. Barbour

Torgny Lindvall

Chalmers, Mathematical Sciences

University of Gothenburg

Journal of Theoretical Probability

0894-9840 (ISSN) 1572-9230 (eISSN)

Vol. 19 3 609-630

Subject Categories

Mathematics

DOI

10.1007/s10959-006-0047-9

More information

Latest update

3/30/2020