Winning Without Observing Payoffs: Exploiting Behavioral Biases to Win Nearly Every Round

Avrim Blum, Melissa Dutz
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Abstract

Gameplay under various forms of uncertainty has been widely studied. Feldman et al. (2010) studied a particularly low-information setting in which one observes the opponent's actions but no payoffs, not even one's own, and introduced an algorithm which guarantees one's payoff nonetheless approaches the minimax optimal value (i.e., zero) in a symmetric zero-sum game. Against an opponent playing a minimax-optimal strategy, approaching the value of the game is the best one can hope to guarantee. However, a wealth of research in behavioral economics shows that people often do not make perfectly rational, optimal decisions. Here we consider whether it is possible to actually win in this setting if the opponent is behaviorally biased. We model several deterministic, biased opponents and show that even without knowing the game matrix in advance or observing any payoffs, it is possible to take advantage of each bias in order to win nearly every round (so long as the game has the property that each action beats and is beaten by at least one other action). We also provide a partial characterization of the kinds of biased strategies that can be exploited to win nearly every round, and provide algorithms for beating some kinds of biased strategies even when we don't know which strategy the opponent uses.
不观察回报就能获胜:利用行为偏差,几乎每局必胜
人们对各种形式的不确定性下的博弈进行了广泛研究。费尔德曼等人(2010 年)研究了一种信息量特别小的环境,在这种环境中,人们可以观察到对手的行动,但却观察不到回报,甚至连自己的回报也观察不到。面对采用最小最优策略的对手,接近博弈值是我们所能保证的最好结果。然而,行为经济学的大量研究表明,人们往往不会做出完全理性的最优决策。在这里,我们要考虑的是,如果对手在行为上存在偏见,那么在这种情况下是否有可能真正获胜。我们模拟了几个确定性的、有偏见的对手,结果表明,即使事先不知道博弈矩阵,也不观察任何回报,也有可能利用每种偏见赢得几乎每一轮的胜利(只要博弈具有这样的特性,即每种行为都击败并被至少一种其他行为击败)。我们还给出了几乎每局都能获胜的偏置策略的部分特征,并提供了在不知道对手使用哪种策略的情况下击败某些偏置策略的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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