JOURNAL ARTICLE

ASSIST: Towards Label Noise-Robust Dialogue State Tracking

Fanghua YeYong FengEmine Yılmaz

Year: 2022 Journal:   Findings of the Association for Computational Linguistics: ACL 2022

Abstract

The MultiWOZ 2.0 dataset has greatly boosted the research on dialogue state tracking (DST). However, substantial noise has been discovered in its state annotations. Such noise brings about huge challenges for training DST models robustly. Although several refined versions, including MultiWOZ 2.1-2.4, have been published recently, there are still lots of noisy labels, especially in the training set. Besides, it is costly to rectify all the problematic annotations. In this paper, instead of improving the annotation quality further, we propose a general framework, named ASSIST (lAbel noiSe-robuSt dIalogue State Tracking), to train DST models robustly from noisy labels. ASSIST first generates pseudo labels for each sample in the training set by using an auxiliary model trained on a small clean dataset, then puts the generated pseudo labels and vanilla noisy labels together to train the primary model. We show the validity of ASSIST theoretically. Experimental results also demonstrate that ASSIST improves the joint goal accuracy of DST by up to $28.16\%$ on MultiWOZ 2.0 and $8.41\%$ on MultiWOZ 2.4, compared to using only the vanilla noisy labels.

Keywords:
Computer science Noise (video) Set (abstract data type) Artificial intelligence Tracking (education) Robustness (evolution) Training set Annotation Noise measurement State (computer science) Machine learning Quality (philosophy) Speech recognition Pattern recognition (psychology) Noise reduction Algorithm Image (mathematics)

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