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Self-supervised Regularization for Text Classification

Meng Zhou, Zechen Li, Pengtao Xie

2021Transactions of the Association for Computational Linguistics13 citationsDOIOpen Access PDF

Abstract

Abstract Text classification is a widely studied problem and has broad applications. In many real-world problems, the number of texts for training classification models is limited, which renders these models prone to overfitting. To address this problem, we propose SSL-Reg, a data-dependent regularization approach based on self-supervised learning (SSL). SSL (Devlin et al., 2019a) is an unsupervised learning approach that defines auxiliary tasks on input data without using any human-provided labels and learns data representations by solving these auxiliary tasks. In SSL-Reg, a supervised classification task and an unsupervised SSL task are performed simultaneously. The SSL task is unsupervised, which is defined purely on input texts without using any human- provided labels. Training a model using an SSL task can prevent the model from being overfitted to a limited number of class labels in the classification task. Experiments on 17 text classification datasets demonstrate the effectiveness of our proposed method. Code is available at https://github.com/UCSD-AI4H/SSReg.

Topics & Concepts

OverfittingComputer scienceRegularization (linguistics)Artificial intelligenceLabeled dataTask (project management)Machine learningSemi-supervised learningTraining setSupervised learningCode (set theory)Pattern recognition (psychology)Natural language processingArtificial neural networkEconomicsSet (abstract data type)ManagementProgramming languageText and Document Classification TechnologiesTopic ModelingNatural Language Processing Techniques
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