DivTOD: Unleashing the Power of LLMs for Diversifying Task-Oriented Dialogue Representations (2404.00557v1)
Abstract: LLMs pre-trained on general text have achieved impressive results in diverse fields. Yet, the distinct linguistic characteristics of task-oriented dialogues (TOD) compared to general text limit the practical utility of existing LLMs. Current task-oriented dialogue pre-training methods overlook the one-to-many property of conversations, where multiple responses can be appropriate given the same conversation context. In this paper, we propose a novel dialogue pre-training model called DivTOD, which collaborates with LLMs to learn diverse task-oriented dialogue representations. DivTOD guides LLMs in transferring diverse knowledge to smaller models while removing domain knowledge that contradicts task-oriented dialogues. Experiments show that our model outperforms strong TOD baselines on various downstream dialogue tasks and learns the intrinsic diversity of task-oriented dialogues.
- Weihao Zeng (24 papers)
- Dayuan Fu (13 papers)
- Keqing He (47 papers)
- Yejie Wang (15 papers)
- Yukai Xu (3 papers)
- Weiran Xu (58 papers)