TL;DR
This paper explores using equation learning techniques to derive differential equation models directly from stochastic agent-based model simulations, offering a more efficient and accurate analysis method for complex biological systems.
Contribution
It introduces a novel approach applying equation learning to agent-based models, overcoming limitations of traditional simulation and coarse-grained modeling methods.
Findings
Equation learning accurately predicts dynamics where coarse models fail.
Requires fewer simulations than traditional methods.
Applicable to diverse biological agent-based models.
Abstract
Agent-based models provide a flexible framework that is frequently used for modelling many biological systems, including cell migration, molecular dynamics, ecology, and epidemiology. Analysis of the model dynamics can be challenging due to their inherent stochasticity and heavy computational requirements. Common approaches to the analysis of agent-based models include extensive Monte Carlo simulation of the model or the derivation of coarse-grained differential equation models to predict the expected or averaged output from the agent-based model. Both of these approaches have limitations, however, as extensive computation of complex agent-based models may be infeasible, and coarse-grained differential equation models can fail to accurately describe model dynamics in certain parameter regimes. We propose that methods from the equation learning field provide a promising, novel, and…
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