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A Refined Mean Field Approximation
Author(s) -
Nicolas Gast,
Benny Van Houdt
Publication year - 2017
Publication title -
hal (le centre pour la communication scientifique directe)
Language(s) - English
DOI - 10.1145/3152542
Subject(s) - mean field theory , mathematics , physics , quantum mechanics
International audienceMean field models are a popular means to approximate large and complex stochastic models that can be represented as N interacting objects. Recently it was shown that under very general conditions the steady-state expectation of any performance functional converges at rate O(1/N) to its mean field approximation. In this paper we establish a result that expresses the constant associated with this 1/N term. This constant can be computed easily as it is expressed in terms of the Jacobian and Hessian of the drift in the fixed point and the solution of a single Lyapunov equation. This allows us to propose a refined mean field approximation. By considering a variety of applications, that include coupon collector, load balancing and bin packing problems, we illustrate that the proposed refined mean field approximation is significantly more accurate that the classic mean field approximation for small and moderate values of N: relative errors are often below 1% for systems with N=10

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