Unsupervised Data Augmentation with Naive Augmentation and without Unlabeled Data
October 22, 2020 ยท Declared Dead ยท ๐ Conference on Empirical Methods in Natural Language Processing
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Authors
David Lowell, Brian E. Howard, Zachary C. Lipton, Byron C. Wallace
arXiv ID
2010.11966
Category
cs.CL: Computation & Language
Cross-listed
cs.LG
Citations
25
Venue
Conference on Empirical Methods in Natural Language Processing
Last Checked
4 months ago
Abstract
Unsupervised Data Augmentation (UDA) is a semi-supervised technique that applies a consistency loss to penalize differences between a model's predictions on (a) observed (unlabeled) examples; and (b) corresponding 'noised' examples produced via data augmentation. While UDA has gained popularity for text classification, open questions linger over which design decisions are necessary and over how to extend the method to sequence labeling tasks. This method has recently gained traction for text classification. In this paper, we re-examine UDA and demonstrate its efficacy on several sequential tasks. Our main contribution is an empirical study of UDA to establish which components of the algorithm confer benefits in NLP. Notably, although prior work has emphasized the use of clever augmentation techniques including back-translation, we find that enforcing consistency between predictions assigned to observed and randomly substituted words often yields comparable (or greater) benefits compared to these complex perturbation models. Furthermore, we find that applying its consistency loss affords meaningful gains without any unlabeled data at all, i.e., in a standard supervised setting. In short: UDA need not be unsupervised, and does not require complex data augmentation to be effective.
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