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Cited 1 time in webofscience Cited 2 time in scopus
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Mixup Based Cross-Consistency Training for Named Entity Recognitionopen access

Authors
Youn, GeonsikYoon, BohanJi, SeungbinKo, DaheeRhee, Jongtae
Issue Date
Nov-2022
Publisher
MDPI
Keywords
deep learning; named entity recognition; consistency regularization; semi-supervised learning; mixup
Citation
Applied Sciences, v.12, no.21, pp 1 - 15
Pages
15
Indexed
SCIE
SCOPUS
Journal Title
Applied Sciences
Volume
12
Number
21
Start Page
1
End Page
15
URI
https://scholarworks.dongguk.edu/handle/sw.dongguk/2312
DOI
10.3390/app122111084
ISSN
2076-3417
2076-3417
Abstract
Named Entity Recognition (NER) is at the core of natural language understanding. The quality and amount of datasets determine the performance of deep-learning-based NER models. As datasets for NER require token-level or word-level labels to be assigned, annotating the datasets is expensive and time consuming. To alleviate efforts of manual anotation, many prior studies utilized weak supervision for NER tasks. However, using weak supervision directly would be an obstacle for training deep networks because the labels automatically annotated contain a a lot of noise. In this study, we propose a framework to better train the deep model for NER tasks using weakly labeled data. The proposed framework stems from the idea that mixup, which was recently considered as a data augmentation strategy, would be an obstacle to deep model training for NER tasks. Inspired by this idea, we used mixup as a perturbation function for consistency regularization, one of the semi-supervised learning strategies. To support our idea, we conducted several experiments for NER benchmarks. Experimental results proved that directly using mixup on NER tasks hinders deep model training while demonstrating that the proposed framework achieves improved performances compared to employing only a few human-annotated data.
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