2023
DOI: 10.1109/access.2023.3336311
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Data Augmentation Using Transformers and Similarity Measures for Improving Arabic Text Classification

Dania Refai,
Saleh Abu-Soud,
Mohammad J. Abdel-Rahman

Abstract: The performance of learning models heavily relies on the availability and adequacy of training data. To address the dataset adequacy issue, researchers have extensively explored data augmentation (DA) as a promising approach. DA generates new data instances through transformations applied to the available data, thereby increasing dataset size and variability. This approach has enhanced model performance and accuracy, particularly in addressing class imbalance problems in classification tasks. However, few stud… Show more

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Cited by 3 publications
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