An Approach to Bounded Rationality

Ben-sasson, Eli, Kalai, Ehud, Kalai, Adam

Neural Information Processing Systems 

A central question in game theory and artificial intelligence is how a rational agent should behave in a complex environment, given that it cannot perform unbounded computations. We study strategic aspects of this question by formulating a simple model of a game with additional costs (computational or otherwise) for each strategy. First we connect this to zero-sum games, proving a counterintuitive generalization of the classic min-max theorem to zero-sum games with the addition of strategy costs. We then show that potential games with strategy costs remain potential games. Both zero-sum and potential games with strategy costs maintain a very appealing property: simple learning dynamics converge to equilibrium.

Similar Docs  Excel Report  more

TitleSimilaritySource
None found