Dialogue State Tracking
Dialogue state tracking (DST) aims to accurately monitor the evolving understanding of a user's needs throughout a conversation, crucial for building effective task-oriented dialogue systems. Current research heavily emphasizes improving DST's robustness and adaptability, particularly focusing on leveraging large language models (LLMs) for zero-shot and few-shot learning, exploring techniques like prompt engineering, data augmentation (including synthetic data), and novel architectures such as those based on table operations or question answering. Advances in DST are vital for enhancing the capabilities of conversational AI, leading to more natural and efficient human-computer interactions across various applications.
Papers
TaSL: Continual Dialog State Tracking via Task Skill Localization and Consolidation
Yujie Feng, Xu Chu, Yongxin Xu, Guangyuan Shi, Bo Liu, Xiao-Ming Wu
Continual Dialogue State Tracking via Reason-of-Select Distillation
Yujie Feng, Bo Liu, Xiaoyu Dong, Zexin Lu, Li-Ming Zhan, Albert Y.S. Lam, Xiao-Ming Wu