Article ID Journal Published Year Pages File Type
377480 Artificial Intelligence 2007 8 Pages PDF
Abstract

A great deal of theoretical effort in multiagent learning involves either embracing or avoiding the inherent symmetry between the problem and the solution. Regret minimization is an approach to the prescriptive, non-cooperative goal that explicitly breaks this symmetry, but, since it makes no assumptions about the adversary, it achieves only limited guarantees. In this paper, we consider a hierarchy of goals that begins with the basics of regret minimization and moves towards the utility guarantees achievable by agents that could also guarantee converging to a game-theoretic equilibrium.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence