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Game theory / Decision theory / Gaming / Cooperative game theory / Core / Coalition / Shapley value / Bayesian probability / Transferable utility / Bayesian inference / Nash equilibrium / Prior probability
Date: 2008-07-19 11:36:16
Game theory
Decision theory
Gaming
Cooperative game theory
Core
Coalition
Shapley value
Bayesian probability
Transferable utility
Bayesian inference
Nash equilibrium
Prior probability

Bayesian Reinforcement Learning for Coalition Formation under Uncertainty Georgios Chalkiadakis Dept. of Computer Science, Univ. of Toronto Toronto, ON, M5S 3G4, Canada Abstract

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