Back to Search Start Over

Resolving social dilemmas with minimal reward transfer

Authors :
Willis, Richard
Du, Yali
Leibo, Joel Z
Luck, Michael
Publication Year :
2023

Abstract

Social dilemmas present a significant challenge in multi-agent cooperation because individuals are incentivised to behave in ways that undermine socially optimal outcomes. Consequently, self-interested agents often avoid collective behaviour. In response, we formalise social dilemmas and introduce a novel metric, the general self-interest level, to quantify the disparity between individual and group rationality in such scenarios. This metric represents the maximum proportion of their individual rewards that agents can retain while ensuring that a social welfare optimum becomes a dominant strategy. Our approach diverges from traditional concepts of altruism, instead focusing on strategic reward redistribution. By transferring rewards among agents in a manner that aligns individual and group incentives, rational agents will maximise collective welfare while pursuing their own interests. We provide an algorithm to compute efficient transfer structures for an arbitrary number of agents, and introduce novel multi-player social dilemma games to illustrate the effectiveness of our method. This work provides both a descriptive tool for analysing social dilemmas and a prescriptive solution for resolving them via efficient reward transfer contracts. Applications include mechanism design, where we can assess the impact on collaborative behaviour of modifications to models of environments.<br />Comment: 35 pages, 15 tables, 2 figures. Submitted to the Journal of Autonomous Agents and Multi-Agent Systems: Special Issue on Citizen-Centric AI Systems

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2310.12928
Document Type :
Working Paper