2021
DOI: 10.48550/arxiv.2102.08147
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Large-Context Conversational Representation Learning: Self-Supervised Learning for Conversational Documents

Abstract: This paper presents a novel self-supervised learning method for handling conversational documents consisting of transcribed text of human-to-human conversations. One of the key technologies for understanding conversational documents is utterance-level sequential labeling, where labels are estimated from the documents in an utterance-by-utterance manner. The main issue with utterance-level sequential labeling is the difficulty of collecting labeled conversational documents, as manual annotations are very costly… Show more

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