Repeated Games against Budgeted Adversaries
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چکیده
We study repeated zero-sum games against an adversary on a budget. Given that an adversary is constrained by the amount he can play each action, we consider what ought to be the player’s best mixed strategy with knowledge of this budget. We show that, for a general class of normal-form games, the minimax strategy is indeed efficiently computable and relies on a simple random walk.
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Repeated Games against Budgeted Adversaries
We study repeated zero-sum games against an adversary on a budget. Given that an adversary has some constraint on the sequence of actions that he plays, we consider what ought to be the player’s best mixed strategy with knowledge of this budget. We show that, for a general class of normal-form games, the minimax strategy is indeed efficiently computable and relies on a “random playout” techniqu...
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