Equation-free Model Reduction in Agent-based Computations: Coarse-grained Bifurcation and Variable-free Rare Event Analysis
Authored by Ioannis G Kevrekidis, Ping Liu, C I Siettos, C W Gear
Date Published: 2015
DOI: 10.1051/mmnp/201510307
Sponsors:
U.S. Air Force Office of Scientific Research
United States Department of Energy (DOE)
United States National Science Foundation (NSF)
Platforms:
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Model Documentation:
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Abstract
We study the coarse-grained, reduced dynamics of an agent-based market
model due to Omurtag and Sirovich {[}18]. We first describe the large
agent number, deterministic limit of the system dynamics by performing
numerical bifurcation calculations on a continuum approximation of their
model. By exploring a broad parameter space, we observe several
interesting phenomena including turning points leading to unstable
stationary agent density distributions as well as a type of
``termination point.{''} Close to these deterministic turning points we
expect the stochastic underlying model to exhibit rare event
transitions. We then proceed to discuss a coarse-grained approach to the
quantitative study of these rare events. The basic assumption is that
the dynamics of the system can be decomposed into fast (noise) and slow
(single reaction coordinate) dynamics, so that the system can be
described by an effective, coarse-grained Fokker-Planck(FP) equation. An
explicit form of this effective FP equation is not available; in our
computations we bypass the lack of a closed form equation by numerically
estimating its components - the drift and diffusion coefficients - from
ensembles of short bursts of microscopic simulations with judiciously
chosen initial conditions. The reaction coordinate is first constructed
based on our understanding of the continuum model close to the turning
points, and it gives results reasonably close to those from brute-force
direct simulations. When no guidelines for the selection of a good
reaction coordinate are available, data-mining tools, in particular
Diffusion Maps, can be used to determine a suitable reaction coordinate.
In the third part of this work we demonstrate this ``variable-free{''}
approach by constructing a reaction coordinate simply based on the data
from the simulation itself. This Diffusion Map based, empirical
coordinate gives results consistent with the direct simulation.
Tags
Simulation
algorithms
systems
Framework
Geometric diffusions
Structure definition
Harmonic-analysis
Supply-chains
Maps
Tool