Adaptive bias for dissensus in nonlinear opinion dynamics with application to evolutionary division of labor games
This paper addresses the problem of adaptively controlling the bias parameter in nonlinear opinion dynamics (NOD) to allocate agents into groups of arbitrary sizes for the purpose of maximizing collective rewards. In previous work, an algorithm based on the coupling of NOD with an multi-objective be...
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Zusammenfassung: | This paper addresses the problem of adaptively controlling the bias parameter
in nonlinear opinion dynamics (NOD) to allocate agents into groups of arbitrary
sizes for the purpose of maximizing collective rewards. In previous work, an
algorithm based on the coupling of NOD with an multi-objective behavior
optimization was successfully deployed as part of a multi-robot system in an
autonomous task allocation field experiment. Motivated by the field results, in
this paper we propose and analyze a new task allocation model that synthesizes
NOD with an evolutionary game framework. We prove sufficient conditions under
which it is possible to control the opinion state in the group to a desired
allocation of agents between two tasks through an adaptive bias using
decentralized feedback. We then verify the theoretical results with a
simulation study of a collaborative evolutionary division of labor game. |
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DOI: | 10.48550/arxiv.2409.13964 |