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Rumination on Infinite Markov Systems

Published online by Cambridge University Press:  05 September 2017

Abstract

Recent work by Moussouris [10] has clarified our present knowledge of finite Markov fields. The present note examines, in a loose and general fashion, whether one can extend the treatment to infinite fields.

Type
Part V — Stochastic Processes
Copyright
Copyright © 1975 Applied Probability Trust 

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