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arxiv: 1612.06000 · v1 · pith:L6QY7UIT · submitted 2016-12-18 · cs.AI · cs.LG· stat.ML

Sample-efficient Deep Reinforcement Learning for Dialog Control

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classification cs.AI cs.LGstat.ML
keywords policydialoglearningmethodsdialogsgradientnumberreinforcement
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Representing a dialog policy as a recurrent neural network (RNN) is attractive because it handles partial observability, infers a latent representation of state, and can be optimized with supervised learning (SL) or reinforcement learning (RL). For RL, a policy gradient approach is natural, but is sample inefficient. In this paper, we present 3 methods for reducing the number of dialogs required to optimize an RNN-based dialog policy with RL. The key idea is to maintain a second RNN which predicts the value of the current policy, and to apply experience replay to both networks. On two tasks, these methods reduce the number of dialogs/episodes required by about a third, vs. standard policy gradient methods.

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