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Tracking Must Go On: Dialogue State Tracking with Verified Self-Training

Title
Tracking Must Go On: Dialogue State Tracking with Verified Self-Training
Authors
LEE, GARY GEUNBAELee, JihyunLee, ChaebinKim, Yunsu
Date Issued
2023-08-20
Publisher
International Speech Communication Association
Abstract
In task-oriented dialogues, dialogue state tracking (DST) is a critical component as it identifies specific information for the user's purpose. However, as annotating DST data requires a significant amount of human effort, leveraging raw dialogue is crucial. To address this, we propose a new self-training (ST) framework with a verification model. Unlike previous ST methods that rely on extensive hyper-parameter searching to filter out inaccurate data, our verification methodology ensures the accuracy and validity of the dataset without using a fixed threshold. Furthermore, to mitigate overfitting, we augment the dataset by generating diverse user utterances. Even when using only 10% of the labeled data, our approach achieves comparable results to a fully labeled MultiWOZ2.0 dataset. The evaluation of scalability also demonstrates enhanced robustness in predicting unseen values.
URI
https://oasis.postech.ac.kr/handle/2014.oak/121283
Article Type
Conference
Citation
24th International Speech Communication Association, Interspeech 2023, page. 4678 - 4682, 2023-08-20
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