基于LSTM递归神经网络分类改进尼泊尔新闻推荐

A. Basnet, Arun K. Timalsina
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引用次数: 12

摘要

新闻分类是将新闻文档分组到一些预定义的类别中的过程。由于成千上万的在线新闻门户网站每天产生的尼泊尔新闻内容越来越多,对这些新闻项目进行适当的分类已经成为新闻读者的必要条件。本研究旨在改进基于递归神经网络的尼泊尔新闻分类,该分类使用深层神经网络将新闻分类到适当的类别。在本研究中,我们使用了8个不同类别的5个热门新闻门户网站进行数据收集,并比较了这些网站的分类准确率,并测量了总体准确率。基于准确率、精密度、召回率和F1分数等参数,将该模型与支持向量机进行比较。长短期记忆递归神经网络的使用提高了word2vec模型的准确率。与支持向量机的准确率81.41%,准确率85%相比,本研究中提出的模型的准确率为84.63%,精密度为89%。从新闻的类别来看,模型对体育新闻的分类更准确,对经济新闻的分类最不准确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Nepali News Recommendation Using Classification Based on LSTM Recurrent Neural Networks
News classification is the process of grouping news documents into some predefined categories. Due to the increasing volume of the Nepali news content being generated every day by thousands of online news portals, appropriate classification of these news items has become a necessity for the news readers. This research was targeted to improve the Nepali news classification based on Recurrent Neural Networks, that uses deep layers of neural networks to classify the news to an appropriate category. In this research paper, five popular news portals website across eight different categories was used for the purpose of data gathering and their classification accuracies were compared among these websites as well as overall accuracy was measured. The model was compared with the Support Vector Machine based on the parameters Accuracy, Precision, Recall and F1 Score. The use of Long Short Term Memory Recurrent Neural Network has improved the precision with the use of word2vec model. The presented model in the research has achieved a good accuracy of 84.63% and precision of 89% in compared to the SVM where the accuracy was 81.41% and precision 85%. Based on the categories of the news, sports news was classified more accurately by the model and economy was least accurately classified.
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