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Building Poker Agent Using Reinforcement Learning with Neural Networks

机译:建立扑克代理使用强化学习与神经网络

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Poker is a game with incomplete and imperfect information. The ability to estimate opponent and interpret its actions makes a player as a world class player. Finding optimal game strategy is not enough to win poker game. As in real life as in online poker game, the most time of it consists of opponent analysis. This paper illustrates a development of poker agent using reinforcement learning with neural networks.
机译:扑克是一个具有不完整和不完美信息的游戏。估计对手并解释其行动的能力使球员成为世界级球员。寻找最佳游戏策略不足以赢得扑克游戏。与在线扑克游戏一样的现实生活中,它的最多时间包括对手分析。本文说明了使用与神经网络的强化学习的扑克代理的开发。

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