Controllable Mixed-Initiative Dialogue Generation through Prompting (2305.04147v1)
Abstract: Mixed-initiative dialogue tasks involve repeated exchanges of information and conversational control. Conversational agents gain control by generating responses that follow particular dialogue intents or strategies, prescribed by a policy planner. The standard approach has been fine-tuning pre-trained LLMs to perform generation conditioned on these intents. However, these supervised generation models are limited by the cost and quality of data annotation. We instead prompt LLMs as a drop-in replacement to fine-tuning on conditional generation. We formalize prompt construction for controllable mixed-initiative dialogue. Our findings show improvements over fine-tuning and ground truth responses according to human evaluation and automatic metrics for two tasks: PersuasionForGood and Emotional Support Conversations.
- Maximillian Chen (11 papers)
- Xiao Yu (66 papers)
- Weiyan Shi (41 papers)
- Urvi Awasthi (2 papers)
- Zhou Yu (206 papers)