IntentDial: An Intent Graph based Multi-Turn Dialogue System with Reasoning Path Visualization (2310.11818v1)
Abstract: Intent detection and identification from multi-turn dialogue has become a widely explored technique in conversational agents, for example, voice assistants and intelligent customer services. The conventional approaches typically cast the intent mining process as a classification task. Although neural classifiers have proven adept at such classification tasks, the issue of neural network models often impedes their practical deployment in real-world settings. We present a novel graph-based multi-turn dialogue system called , which identifies a user's intent by identifying intent elements and a standard query from a dynamically constructed and extensible intent graph using reinforcement learning. In addition, we provide visualization components to monitor the immediate reasoning path for each turn of a dialogue, which greatly facilitates further improvement of the system.
- Zengguang Hao (1 paper)
- Jie Zhang (847 papers)
- Binxia Xu (2 papers)
- Yafang Wang (8 papers)
- Gerard de Melo (78 papers)
- Xiaolong Li (107 papers)