Towards Explainable And Controllable Open Domain Dialogue Generation With Dialogue Acts · Awesome LLM Papers Contribute to LLM-Bible

Towards Explainable And Controllable Open Domain Dialogue Generation With Dialogue Acts

Can Xu, Wei Wu, Yu Wu. Arxiv 2018 – 35 citations

[Paper]    
Agentic Reinforcement Learning

We study open domain dialogue generation with dialogue acts designed to explain how people engage in social chat. To imitate human behavior, we propose managing the flow of human-machine interactions with the dialogue acts as policies. The policies and response generation are jointly learned from human-human conversations, and the former is further optimized with a reinforcement learning approach. With the dialogue acts, we achieve significant improvement over state-of-the-art methods on response quality for given contexts and dialogue length in both machine-machine simulation and human-machine conversation.

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