My Agent to Our Agent in AI

Rajam Reddy

Abstract


This work investigates the collective adaptive agent, which adapts to a group, as opposed to the individual adaptive agent, which adjusts to a single user. This study begins by defining the collective adaptive situation by analysing the subject experiments in the playing card game Barnga, and then explores the components that drive the group to the collective adaptive condition. Intensive simulations using Barnga agents indicated the following consequences: (1) The leader, who considers the opinions of other players, helps to guide players to the collective adaptive situation, and (2) an appropriate role balance among players (i.e., the leader, the claiming, and the quiet player, who make the most and least number of corrections) is required to derive the collective adaptive situation.

References


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