2022
DOI: 10.48550/arxiv.2202.05932
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Metadata-Induced Contrastive Learning for Zero-Shot Multi-Label Text Classification

Abstract: Large-scale multi-label text classification (LMTC) aims to associate a document with its relevant labels from a large candidate set. Most existing LMTC approaches rely on massive human-annotated training data, which are often costly to obtain and suffer from a long-tailed label distribution (i.e., many labels occur only a few times in the training set). In this paper, we study LMTC under the zero-shot setting, which does not require any annotated documents with labels and only relies on label surface names and… Show more

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