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Conversational Semantic Parsing for Dialog State Tracking

24 October 2020
Jianpeng Cheng
Devang Agrawal
Héctor Martínez Alonso
Shruti Bhargava
Joris Driesen
F. Flego
Shaona Ghosh
D. Kaplan
Dimitri Kartsaklis
Lin Li
Dhivya Piraviperumal
Jason D. Williams
Hong-ye Yu
Diarmuid Ó Séaghdha
Anders Johannsen
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Abstract

We consider a new perspective on dialog state tracking (DST), the task of estimating a user's goal through the course of a dialog. By formulating DST as a semantic parsing task over hierarchical representations, we can incorporate semantic compositionality, cross-domain knowledge sharing and co-reference. We present TreeDST, a dataset of 27k conversations annotated with tree-structured dialog states and system acts. We describe an encoder-decoder framework for DST with hierarchical representations, which leads to 20% improvement over state-of-the-art DST approaches that operate on a flat meaning space of slot-value pairs.

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