Digital Ecosystems: Stability of Evolving Agent Populations
P. De Wilde, G. Briscoe

TL;DR
This paper extends the stability analysis of multi-agent systems to include evolutionary dynamics in digital ecosystems, using entropy-based measures and simulations to assess stability.
Contribution
It introduces an entropy-based stability measure for evolving agent populations and validates it through simulations aligned with existing theoretical frameworks.
Findings
Entropy measure correlates with system stability.
Simulations confirm theoretical stability predictions.
Evolving populations maintain bounded behavior.
Abstract
Stability is perhaps one of the most desirable features of any engineered system, given the importance of being able to predict its response to various environmental conditions prior to actual deployment. Engineered systems are becoming ever more complex, approaching the same levels of biological ecosystems, and so their stability becomes ever more important, but taking on more and more differential dynamics can make stability an ever more elusive property. The Chli-DeWilde definition of stability views a Multi-Agent System as a discrete time Markov chain with potentially unknown transition probabilities. With a Multi-Agent System being considered stable when its state, a stochastic process, has converged to an equilibrium distribution, because stability of a system can be understood intuitively as exhibiting bounded behaviour. We investigate an extension to include Multi-Agent Systems…
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Taxonomy
TopicsEvolutionary Game Theory and Cooperation · Modular Robots and Swarm Intelligence · Gene Regulatory Network Analysis
