Author:
Fan Xiaojing,Runa A,Pei Zhili,Jiang Mingyang
Abstract
Abstract
This paper studies the text classification based on deep learning. Aiming at the problem of over fitting and training time consuming of CNN text classification model, a SDCNN model is constructed based on sparse dropout convolutional neural network. Experimental results show that, compared with CNN, SDCNN further improves the classification performance of the model, and its classification accuracy and precision can reach 98.96% and 85.61%, respectively, indicating that SDCNN has more advantages in text classification problems.
Subject
General Physics and Astronomy
Cited by
2 articles.
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