Beyond Domain APIs: Task-oriented Conversational Modeling with Unstructured Knowledge Access Track in DSTC9 (2101.09276v3)
Abstract: Most prior work on task-oriented dialogue systems are restricted to a limited coverage of domain APIs, while users oftentimes have domain related requests that are not covered by the APIs. This challenge track aims to expand the coverage of task-oriented dialogue systems by incorporating external unstructured knowledge sources. We define three tasks: knowledge-seeking turn detection, knowledge selection, and knowledge-grounded response generation. We introduce the data sets and the neural baseline models for three tasks. The challenge track received a total of 105 entries from 24 participating teams. In the evaluation results, the ensemble methods with different large-scale pretrained LLMs achieved high performances with improved knowledge selection capability and better generalization into unseen data.
- Seokhwan Kim (29 papers)
- Mihail Eric (14 papers)
- Behnam Hedayatnia (27 papers)
- Karthik Gopalakrishnan (34 papers)
- Yang Liu (2253 papers)
- Chao-Wei Huang (28 papers)
- Dilek Hakkani-Tur (94 papers)