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Using Bayesian Networks to Model a Poker Player

机译:使用贝叶斯网络来模拟扑克玩家

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Opponents are characterized by a Bayesian network intended to guide Monte-Carlo Tree Search through the game tree of No-Limit Texas Hold'em Poker. By using a probabilistic model of opponents, the network is able to integrate all available sources of information, including the infrequent revelations of hidden beliefs. These revelations are biased, and as such are difficult to incorporate into action prediction. The proposed network mitigates this bias via the expectation maximization algorithm and a probabilistic characterization of the hidden variables that generate observations.
机译:反对者的特点是贝叶斯网络,旨在通过No-Limit Texas Hold'em Poker的游戏树引导Monte-Carlo树搜索。 通过使用对手的概率模型,网络能够集成所有可用的信息来源,包括隐藏信仰的不常见的启示。 这些启示偏置,因此难以纳入动作预测。 所提出的网络通过期望最大化算法和生成观察的隐藏变量的概率表征来减轻这种偏差。

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