2024
DOI: 10.31235/osf.io/bgcjk
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Adaptive Maximization of Social Welfare

Nicol`o Cesa-Bianchi,
Roberto Colomboni,
Maximilian Kasy

Abstract: We consider the problem of repeatedly choosing policies to maximize social welfare. Welfare is a weighted sum of private utility and public revenue. Earlier outcomes inform later policies. Utility is not observed, but indirectly inferred. Response functions are learned through experimentation. We derive a lower bound on regret, and a matching adversarial upper bound for a variant of the Exp3 algorithm. Cumulative regret grows at a rate of T2/3. This implies that (i) welfare maximization is harder than the mult… Show more

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