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MultiWOZ 2.4: A Multi-Domain Task-Oriented Dialogue Dataset with Essential Annotation Corrections to Improve State Tracking Evaluation

Fanghua Ye, Jarana Manotumruksa, Emine Yılmaz

202260 citationsDOIOpen Access PDF

Abstract

The MultiWOZ 2.0 dataset has greatly stimulated the research of task-oriented dialogue systems. However, its state annotations contain substantial noise, which hinders a proper evaluation of model performance. To address this issue, massive efforts were devoted to correcting the annotations. Three improved versions (i.e., MultiWOZ 2.1-2.3) have then been released. Nonetheless, there are still plenty of incorrect and inconsistent annotations. This work introduces MultiWOZ 2.4, which refines the annotations in the validation set and test set of MultiWOZ 2.1. The annotations in the training set remain unchanged (same as MultiWOZ 2.1) to elicit robust and noise-resilient model training. We benchmark eight state-of-the-art dialogue state tracking models on MultiWOZ 2.4. All of them demonstrate much higher performance than on MultiWOZ 2.1.

Topics & Concepts

Benchmark (surveying)Computer scienceTask (project management)AnnotationSet (abstract data type)Noise (video)Tracking (education)Domain (mathematical analysis)Test setArtificial intelligenceTraining setState (computer science)Machine learningData miningAlgorithmProgramming languageImage (mathematics)EngineeringPsychologyGeodesySystems engineeringMathematicsMathematical analysisGeographyPedagogySpeech and dialogue systemsTopic ModelingContext-Aware Activity Recognition Systems
MultiWOZ 2.4: A Multi-Domain Task-Oriented Dialogue Dataset with Essential Annotation Corrections to Improve State Tracking Evaluation | Litcius