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Hidden Agenda: a Social Deduction Game with Diverse Learned Equilibria

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arxiv 2201.01816 v1 pith:AP6J5X7D submitted 2022-01-05 cs.AI cs.LGcs.MA

Hidden Agenda: a Social Deduction Game with Diverse Learned Equilibria

classification cs.AI cs.LGcs.MA
keywords agentshiddenagendadeductionsocialcooperateenvironmentgame
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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A key challenge in the study of multiagent cooperation is the need for individual agents not only to cooperate effectively, but to decide with whom to cooperate. This is particularly critical in situations when other agents have hidden, possibly misaligned motivations and goals. Social deduction games offer an avenue to study how individuals might learn to synthesize potentially unreliable information about others, and elucidate their true motivations. In this work, we present Hidden Agenda, a two-team social deduction game that provides a 2D environment for studying learning agents in scenarios of unknown team alignment. The environment admits a rich set of strategies for both teams. Reinforcement learning agents trained in Hidden Agenda show that agents can learn a variety of behaviors, including partnering and voting without need for communication in natural language.

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