Learning Strategic Value and Cooperation in Multi-Player Stochastic Games through Side Payments
Kuhnle, Alan, Richley, Jeffrey, Perez-Lavin, Darleen
–arXiv.org Artificial Intelligence
For general-sum, n-player, strategic games with transferable utility, the Harsanyi-Shapley value provides a computable method to both 1) quantify the strategic value of a player; and 2) make cooperation rational through side payments. We give a simple formula to compute the HS value in normal-form games. Next, we provide two methods to generalize the HS values to stochastic (or Markov) games, and show that one of them may be computed using generalized Q-learning algorithms. Finally, an empirical validation is performed on stochastic grid-games with three or more players. Source code is provided to compute HS values for both the normal-form and stochastic game setting.
arXiv.org Artificial Intelligence
Mar-9-2023
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