Conversational Semantic Parsing (2009.13655v1)
Abstract: The structured representation for semantic parsing in task-oriented assistant systems is geared towards simple understanding of one-turn queries. Due to the limitations of the representation, the session-based properties such as co-reference resolution and context carryover are processed downstream in a pipelined system. In this paper, we propose a semantic representation for such task-oriented conversational systems that can represent concepts such as co-reference and context carryover, enabling comprehensive understanding of queries in a session. We release a new session-based, compositional task-oriented parsing dataset of 20k sessions consisting of 60k utterances. Unlike Dialog State Tracking Challenges, the queries in the dataset have compositional forms. We propose a new family of Seq2Seq models for the session-based parsing above, which achieve better or comparable performance to the current state-of-the-art on ATIS, SNIPS, TOP and DSTC2. Notably, we improve the best known results on DSTC2 by up to 5 points for slot-carryover.
- Armen Aghajanyan (31 papers)
- Jean Maillard (17 papers)
- Akshat Shrivastava (25 papers)
- Keith Diedrick (2 papers)
- Mike Haeger (1 paper)
- Haoran Li (166 papers)
- Yashar Mehdad (37 papers)
- Ves Stoyanov (15 papers)
- Anuj Kumar (58 papers)
- Mike Lewis (78 papers)
- Sonal Gupta (26 papers)