Learning Cooperative Games

Balcan, Maria Florina (Carnegie-Mellon University) | Procaccia, Ariel D. (Carnegie-Mellon University) | Zick, Yair (Carnegie-Mellon University)

AAAI Conferences 

This paper explores a PAC (probably approximately correct) learning model in cooperative games. Specifically, we are given m random samples of coalitions and their values, taken from some unknown cooperative game; can we predict the values of unseen coalitions? We study the PAC learnability of several well-known classes of cooperative games, such as network flow games, threshold task games, and induced subgraph games. We also establish a novel connection between PAC learnability and core stability: for games that are efficiently learnable, it is possible to find payoff divisions that are likely to be stable using a polynomial number of samples.

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