Computational methods for stochastic relations and Markovian couplings

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Abstract

Order-preserving couplings are elegant tools for obtaining robust estimates of time-dependent and stationary distributions of Markov processes that are too complex to be analyzed exactly. The starting point of this paper is to study stochastic relations, which may be viewed as natural generalizations of stochastic orders. This generalization is motivated by the observation that for the stochastic ordering of two Markov processes, it suffices that the generators of the processes preserve some, not necessarily reflexive or transitive, subrelation of the order relation. The main contributions of the paper are an algorithmic characterization of stochastic relations between finite spaces, and a truncation approach for comparing infinite-state Markov processes. The methods are illustrated with applications to loss networks and parallel queues.
Original languageEnglish
Title of host publication4th International ICST Workshop on Tools for solving Structured Markov Chains
Subtitle of host publicationSMCTools 2009
PublisherACM
DOIs
Publication statusPublished - 2009
MoE publication typeA4 Conference publication
EventInternational ICST Workshop on Tools for Solving Structured Markov Chains - Pisa, Italy
Duration: 19 Oct 200919 Oct 2009
Conference number: 4
http://www.smctools.org/2009/index.shtml

Workshop

WorkshopInternational ICST Workshop on Tools for Solving Structured Markov Chains
Abbreviated titleSMCTOOLS
Country/TerritoryItaly
CityPisa
Period19/10/200919/10/2009
Internet address

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