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Transforming stochastic matricesfor stochastic comparison with the st-order

Published online by Cambridge University Press:  15 November 2003

Tuğrul Dayar
Affiliation:
Department of Computer Engineering, Bilkent University, 06533 Bilkent, Ankara, Turkey.
Jean-Michel Fourneau
Affiliation:
PRSM, Université de Versailles-St.Quentin, 45 avenue des États-Unis, 78035 France; [email protected].
Nihal Pekergin
Affiliation:
PRSM, Université de Versailles-St.Quentin, 45 avenue des États-Unis, 78035 France; [email protected].
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Abstract

We present a transformation for stochastic matrices and analyze theeffects of using it in stochastic comparison with the strong stochastic(st) order. We show that unless the given stochastic matrix is row diagonallydominant, the transformed matrix provides better st bounds on the steady state probability distribution.

Type
Research Article
Copyright
© EDP Sciences, 2003

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