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A Generic Mean Field Convergence Result for Systems of Interacting Objects

Jean‐Yves Le Boudec, David McDonald, Jochen Mundinger

Year
2007
Citations
124

Abstract

We consider a model for interacting objects, where the evolution of each object is given by a finite state Markov chain, whose transition matrix depends on the present and the past of the distribution of states of all objects. This is a general model of wide applicability; we mention as examples: TCP connections, HTTP flows, robot swarms, reputation systems. We show that when the number of objects is large, the occupancy measure of the system converges to a deterministic dynamical system (the "mean field") with dimension the number of states of an individual object. We also prove a fast simulation result, which allows to simulate the evolution of a few particular objects imbedded in a large system. We illustrate how this can be used to model the determination of reputation in large populations, with various liar strategies.

Keywords

Convergence (economics)Markov chainObject (grammar)Stochastic matrixComputer scienceMeasure (data warehouse)Dimension (graph theory)State (computer science)Field (mathematics)Markov process

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