2021
DOI: 10.48550/arxiv.2103.05429
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Data-driven entropic spatially inhomogeneous evolutionary games

Abstract: We introduce novel multi-agent interaction models of entropic spatially inhomogeneous evolutionary undisclosed games and their quasi-static limits. These evolutions vastly generalize first and second order dynamics. Besides the well-posedness of these novel forms of multi-agent interactions, we are concerned with the learnability of individual payoff functions from observation data. We formulate the payoff learning as a variational problem, minimizing the discrepancy between the observations and the prediction… Show more

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