Semantic-Enhanced Explainable Finetuning for Open-Domain Dialogues (2106.03065v2)
Abstract: This paper propose to combine pretrained LLMs with the modular dialogue paradigm for open-domain dialogue modeling. Our method, semantic-enhanced finetuning, instantiates conversation understanding, planning, and response generation as a LLM finetuning task. At inference, we disentangle semantic and token variations by specifying sampling methods and constraints for each module separately. For training and evaluation, we present X-Weibo, a Chinese multi-turn open-domain dialogue dataset with automatic annotation for emotions, DAs, and topical words. Experiments show that semantic-enhanced finetuning outperforms strong baselines on non-semantic and semantic metrics, improves the human-evaluated relevance, coherence, and informativeness, and exhibits considerable controllability over semantic variables.
- Yinhe Zheng (30 papers)
- Yida Wang (62 papers)
- Pei Ke (37 papers)
- Zhenyu Yang (56 papers)
- Minlie Huang (225 papers)