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Papers/Learning Dialogue Representations from Consecutive Utteran...

Learning Dialogue Representations from Consecutive Utterances

Zhihan Zhou, Dejiao Zhang, Wei Xiao, Nicholas Dingwall, Xiaofei Ma, Andrew O. Arnold, Bing Xiang

2022-05-26NAACL 2022 7Question AnsweringFew-Shot LearningConversational Question Answeringintent-classificationRepresentation LearningDialogue ManagementDialogue Act ClassificationIntent DetectionSentence EmbeddingGoal-Oriented Dialogue SystemsOut-of-Distribution DetectionDialogue UnderstandingContrastive LearningTask-Oriented Dialogue SystemsConversational Response SelectionIntent ClassificationSentence-Embedding
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Abstract

Learning high-quality dialogue representations is essential for solving a variety of dialogue-oriented tasks, especially considering that dialogue systems often suffer from data scarcity. In this paper, we introduce Dialogue Sentence Embedding (DSE), a self-supervised contrastive learning method that learns effective dialogue representations suitable for a wide range of dialogue tasks. DSE learns from dialogues by taking consecutive utterances of the same dialogue as positive pairs for contrastive learning. Despite its simplicity, DSE achieves significantly better representation capability than other dialogue representation and universal sentence representation models. We evaluate DSE on five downstream dialogue tasks that examine dialogue representation at different semantic granularities. Experiments in few-shot and zero-shot settings show that DSE outperforms baselines by a large margin. For example, it achieves 13% average performance improvement over the strongest unsupervised baseline in 1-shot intent classification on 6 datasets. We also provide analyses on the benefits and limitations of our model.

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