Deep Learning Based Text Classification: A Comprehensive ...
Deep Learning Based Text Classification: A Comprehensive Review • 3 •We present a detailed overview of more than 150 DL models proposed for text classification. •We review more than 40 popular text classification datasets. •We provide a quantitative analysis of the performance of a selected set of DL models on 16 popular benchmarks.
Based, Texts, Classification, Learning, Deep, Deep learning based text classification
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