Convergence of Markov chains in the relative supremum norm



Journal of Applied Probability

Convergence of Markov chains in the relative supremum norm

Lars Holden

Source: J. Appl. Probab. Volume 37, Number 4 (2000), 1074-1083.

Abstract

It is proved that the strong Doeblin condition (i.e., ps(x,y) ≥ asπ(y) for all x,y in the state space) implies convergence in the relative supremum norm for a general Markov chain. The convergence is geometric with rate (1 - as)1/s. If the detailed balance condition and a weak continuity condition are satisfied, then the strong Doeblin condition is equivalent to convergence in the relative supremum norm. Convergence in other norms under weaker assumptions is proved. The results give qualitative understanding of the convergence.

Primary Subjects: 65C05
Keywords: Markov chain; geometric convergence; relative supremum norm

Full-text: Access denied (no subscription detected)

We're sorry, but we are unable to provide you with the full text of this article because we are not able to identify you as a subscriber.
If you have a personal subscription to this journal, then please login. If you are already logged in, then you may need to update your profile to register your subscription. Read more about accessing full-text
Alternatively, the document is available for a cost of $6. Select the "buy article" button below to purchase this document from a secured VeriSign, Inc. site.
Links and Identifiers

Permanent link to this document: http://projecteuclid.org/euclid.jap/1014843084
Digital Object Identifier: doi:10.1239/jap/1014843084
Mathematical Reviews number (MathSciNet): MR1808869
Zentralblatt MATH identifier: 0983.60064


2008 © Applied Probability Trust