Towards End-to-end Learning For Dialog State Tracking And Management Using Deep Reinforcement Learning | Awesome LLM Papers

Towards End-to-end Learning For Dialog State Tracking And Management Using Deep Reinforcement Learning

Tiancheng Zhao, Maxine Eskenazi Β· Proceedings of the 17th Annual Meeting of the Special Interest Group on Discourse and Dialogue Β· 2016

This paper presents an end-to-end framework for task-oriented dialog systems using a variant of Deep Recurrent Q-Networks (DRQN). The model is able to interface with a relational database and jointly learn policies for both language understanding and dialog strategy. Moreover, we propose a hybrid algorithm that combines the strength of reinforcement learning and supervised learning to achieve faster learning speed. We evaluated the proposed model on a 20 Question Game conversational game simulator. Results show that the proposed method outperforms the modular-based baseline and learns a distributed representation of the latent dialog state.

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