Litcius/Paper detail

A Unified Dialogue User Simulator for Few-shot Data Augmentation

Dazhen Wan, Zheng Zhang, Qi Zhu, Lizi Liao, Minlie Huang

202212 citationsDOIOpen Access PDF

Abstract

Pre-trained language models have shown superior performance in task-oriented dialogues. However, existing datasets are on limited scales, which cannot support large-scale pre-training. Fortunately, various data augmentation methods have been developed to augment large-scale task-oriented dialogue corpora. However, they heavily rely on annotated data in the target domain, which require a tremendous amount of data collection and human labeling work. In this paper, we build a unified dialogue user simulation model by pre-training on several publicly available datasets. The model can then be tuned on a target domain with few-shot data. The experiments on a target dataset across multiple domains show that our proposed model brings remarkable performance increases through data augmentation.

Topics & Concepts

Computer scienceTask (project management)Domain (mathematical analysis)Training setLanguage modelLabeled dataArtificial intelligenceData modelingShot (pellet)Machine learningScale (ratio)Data collectionTask analysisHuman–computer interactionNatural language processingDatabaseChemistryEconomicsMathematical analysisQuantum mechanicsMathematicsPhysicsOrganic chemistryManagementStatisticsTopic ModelingSpeech and dialogue systemsNatural Language Processing Techniques