Exploiting domain-slot related keywords description for Few-Shot Cross-Domain Dialogue State Tracking

Abstract

Collecting dialogue data with domain-slot-value labels for dialogue state tracking (DST) could be a costly process. In this paper, we propose a novel framework based on domain-slot related description to tackle the challenge of few-shot cross-domain DST. Specifically, we design an extraction module to extract domain-slot related verbs and nouns in the dialogue. Then, we integrates them into the description, which aims to prompt the model to identify the slot information. Furthermore, we introduce a random sampling strategy to improve the domain generalization ability of the model. We utilize a pre-trained model to encode contexts and description and generates answers with an auto-regressive manner. Experimental results show that our approaches substantially outperform the existing few-shot DST methods on MultiWOZ and gain strong improvements on the slot accuracy comparing to existing slot description methods.

Publication
EMNLP 2022
Qixiang Gao
Qixiang Gao
Postgraduate Student

Task-oriented Dialogue System, Dialogue State Tracking

Guanting Dong
Guanting Dong
Postgraduate Student

Spoken Language Understading and related applications

Yutao Mou
Yutao Mou
Postgraduate Student

Task-oriented Dialogue System, Spoken Language Understading

Liwen Wang
Liwen Wang
Postgraduate Student

Spoken Language Understading and related applications

Chen Zeng
Chen Zeng
Postgraduate Student
Daichi Guo
Daichi Guo
Postgraduate Student

Debiaes, Class Imbalance

Weiran Xu
Weiran Xu
Associate Professor, Master Supervisor, Ph.D Supervisor

Information Retrieval, Pattern Recognition, Machine Learning