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Local Additivity Based Data Augmentation for Semi-supervised NER

Jiaao Chen, Zhenghui Wang, Ran Tian, Zichao Yang, Diyi Yang

202045 citationsDOIOpen Access PDF

Abstract

Named Entity Recognition (NER) is one of the first stages in deep language understanding yet current NER models heavily rely on humanannotated data. In this work, to alleviate the dependence on labeled data, we propose a Local Additivity based Data Augmentation (LADA) method for semi-supervised NER, in which we create virtual samples by interpolating sequences close to each other. Our approach has two variations: Intra-LADA and Inter-LADA, where Intra-LADA performs interpolations among tokens within one sentence, and Inter-LADA samples different sentences to interpolate. Through linear additions between sampled training data, LADA creates an infinite amount of labeled data and improves both entity and context learning. We further extend LADA to the semi-supervised setting by designing a novel consistency loss for unlabeled data. Experiments conducted on two NER benchmarks demonstrate the effectiveness of our methods over several strong baselines. We have publicly released our code at

Topics & Concepts

Computer scienceContext (archaeology)Consistency (knowledge bases)Labeled dataSentenceCode (set theory)Artificial intelligenceSource codeNatural language processingData miningProgramming languagePaleontologyBiologySet (abstract data type)Seismic Imaging and Inversion TechniquesSeismology and Earthquake StudiesGeophysical Methods and Applications