2021
DOI: 10.48550/arxiv.2111.10957
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Hierarchical Knowledge Distillation for Dialogue Sequence Labeling

Abstract: This paper presents a novel knowledge distillation method for dialogue sequence labeling. Dialogue sequence labeling is a supervised learning task that estimates labels for each utterance in the target dialogue document, and is useful for many applications such as dialogue act estimation. Accurate labeling is often realized by a hierarchically-structured large model consisting of utterance-level and dialogue-level networks that capture the contexts within an utterance and between utterances, respectively. Howe… Show more

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