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SSMix: Saliency-Based Span Mixup for Text Classification

2021-06-15 11:40:23
Soyoung Yoon, Gyuwan Kim, Kyumin Park

Abstract

Data augmentation with mixup has shown to be effective on various computer vision tasks. Despite its great success, there has been a hurdle to apply mixup to NLP tasks since text consists of discrete tokens with variable length. In this work, we propose SSMix, a novel mixup method where the operation is performed on input text rather than on hidden vectors like previous approaches. SSMix synthesizes a sentence while preserving the locality of two original texts by span-based mixing and keeping more tokens related to the prediction relying on saliency information. With extensive experiments, we empirically validate that our method outperforms hidden-level mixup methods on a wide range of text classification benchmarks, including textual entailment, sentiment classification, and question-type classification. Our code is available at this https URL.

Abstract (translated)

URL

https://arxiv.org/abs/2106.08062

PDF

https://arxiv.org/pdf/2106.08062.pdf


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