Bias and Refinement of Multiscale Mean Field Models
Sebastian Allmeier, Nicolas Gast

TL;DR
This paper analyzes the bias in mean field models for two-timescale stochastic systems and introduces a refined approximation with significantly reduced bias, improving accuracy for small population sizes.
Contribution
It provides a detailed bias analysis of the average mean field approximation and proposes a correction method to enhance accuracy in two-timescale models.
Findings
Bias of order O(1/N) in the mean field approximation.
Refined approximation reduces bias to order O(1/N^2).
Accurate for small N, around 10-50, demonstrated via CSMA model.
Abstract
Mean field approximation is a powerful technique which has been used in many settings to study large-scale stochastic systems. In the case of two-timescale systems, the approximation is obtained by a combination of scaling arguments and the use of the averaging principle. This paper analyzes the approximation error of this `average' mean field model for a two-timescale model , where the slow component describes a population of interacting particles which is fully coupled with a rapidly changing environment . The model is parametrized by a scaling factor , e.g. the population size, which as gets large decreases the jump size of the slow component in contrast to the unchanged dynamics of the fast component. We show that under relatively mild conditions, the `average' mean field approximation has a bias of order…
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Taxonomy
TopicsTheoretical and Computational Physics · Stochastic processes and statistical mechanics · Random Matrices and Applications
