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Efficient Dialog Policy Learning via Positive Memory Retention

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arxiv 1810.01371 v3 pith:SU5NGVQI submitted 2018-10-02 cs.AI cs.CLcs.LG

Efficient Dialog Policy Learning via Positive Memory Retention

classification cs.AI cs.CLcs.LG
keywords policyagentsgradientsmethoddialogefficientgamelearning
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This paper is concerned with the training of recurrent neural networks as goal-oriented dialog agents using reinforcement learning. Training such agents with policy gradients typically requires a large amount of samples. However, the collection of the required data in form of conversations between chat-bots and human agents is time-consuming and expensive. To mitigate this problem, we describe an efficient policy gradient method using positive memory retention, which significantly increases the sample-efficiency. We show that our method is 10 times more sample-efficient than policy gradients in extensive experiments on a new synthetic number guessing game. Moreover, in a real-word visual object discovery game, the proposed method is twice as sample-efficient as policy gradients and shows state-of-the-art performance.

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