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图4-1 宝盒
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图4-15 两种方法计算出来的最优值函数对比图
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图5-1 MC方法
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图5-2 DP方法
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图5-3 TD方法
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图5-6 迷宫环境
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图5-7 Sarsa方法得到的最优策略
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图6-12 风格子世界
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图6-13 后向Sarsa(λ)方法得到的最优策略
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图6-14 后向Sarsa(λ)方法得到的最优路径
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图6-15 后向Q(λ)方法得到的最优策略
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图6-16 后向Q(λ)方法得到的最优路径
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图7-3 DQN的神经网络结构
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图7-7 驾驶汽车
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图7-10 飞翔的小鸟
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图7-11 删除游戏背景
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图7-13 灰度化和二值化
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图8-4 )及
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图9-1 异步方法
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图13-12 策略网络结构示意图
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图13-13 价值网络结构示意图
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图13-16 AlphaGo整体架构
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图13-17 在线对弈过程
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图13-18 AlphaGo Zero下棋原理