On approximation of Markov binomial distributions

Abstract

For a Markov chain X=\Xi,i=1,2,...,n\ with the state space \0,1\, the random variable S:=Σi=1nXi is said to follow a Markov binomial distribution. The exact distribution of S, denoted LS, is very computationally intensive for large n (see Gabriel [Biometrika 46 (1959) 454--460] and Bhat and Lal [Adv. in Appl. Probab. 20 (1988) 677--680]) and this paper concerns suitable approximate distributions for LS when X is stationary. We conclude that the negative binomial and binomial distributions are appropriate approximations for LS when VarS is greater than and less than ES, respectively. Also, due to the unique structure of the distribution, we are able to derive explicit error estimates for these approximations.

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