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DAGA: Data Augmentation with a Generation Approach for Low-resource Tagging Tasks

About

Data augmentation techniques have been widely used to improve machine learning performance as they enhance the generalization capability of models. In this work, to generate high quality synthetic data for low-resource tagging tasks, we propose a novel augmentation method with language models trained on the linearized labeled sentences. Our method is applicable to both supervised and semi-supervised settings. For the supervised settings, we conduct extensive experiments on named entity recognition (NER), part of speech (POS) tagging and end-to-end target based sentiment analysis (E2E-TBSA) tasks. For the semi-supervised settings, we evaluate our method on the NER task under the conditions of given unlabeled data only and unlabeled data plus a knowledge base. The results show that our method can consistently outperform the baselines, particularly when the given gold training data are less.

Bosheng Ding, Linlin Liu, Lidong Bing, Canasai Kruengkrai, Thien Hai Nguyen, Shafiq Joty, Luo Si, Chunyan Miao• 2020

Related benchmarks

TaskDatasetResultRank
Named Entity RecognitionCoNLL 03
F1 (Entity)82.05
102
Named Entity RecognitionOntoNotes
F1-score61.15
91
Complex Named Entity RecognitionMultiCoNER (test)
Score (Bn)32.09
76
Named Entity RecognitionMultiCoNER
F1 Score0.4213
48
Named Entity RecognitionNCBI
F1 Score78.09
26
Named Entity Recognitionbc2gm
Entity F151.23
21
Named Entity RecognitionTDMSci
F1 Score57.66
10
Named Entity RecognitionCoNLL
F1 Score0.8182
10
Named Entity RecognitionMultiCoNER entire dataset 1.0 (full)
Accuracy (En)64.3
5
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