会话机器人玩游戏的深度强化学习

H. Cuayáhuitl
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引用次数: 8

摘要

交互式多模态机器人的深度强化学习对于赋予机器可训练的技能习得是有吸引力的。但是这种学习方式仍然存在一些挑战。我们在本文中关注的挑战是有效的政策学习。为了解决这个问题,在本文中,我们将Deep Q-Networks (DQN)方法与一种变体进行了比较,该变体通过避免具有最低负奖励的决策来实现比原始方法更强的决策。我们评估了我们的基线,并提出了两种网格大小(3×3和5×5)的智能体玩零叉游戏的算法。实验结果表明,我们提出的方法可以产生比基线DQN方法更有效的策略,可用于训练交互式社交机器人。
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Deep reinforcement learning for conversational robots playing games
Deep reinforcement learning for interactive multimodal robots is attractive for endowing machines with trainable skill acquisition. But this form of learning still represents several challenges. The challenge that we focus in this paper is effective policy learning. To address that, in this paper we compare the Deep Q-Networks (DQN) method against a variant that aims for stronger decisions than the original method by avoiding decisions with the lowest negative rewards. We evaluated our baseline and proposed algorithms in agents playing the game of Noughts and Crosses with two grid sizes (3×3 and 5×5). Experimental results show evidence that our proposed method can lead to more effective policies than the baseline DQN method, which can be used for training interactive social robots.
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