Machine Learning And Neural Network Methodologies of Analyzing Social Media

V. Karyukin, A. Zhumabekova, Sandugash Yessenzhanova
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引用次数: 4

Abstract

The rapid development of the Internet has led to a significant increase in the number of news sites and social networks that describe various events in the world and society. People actively share their opinions about various events in the world. Manually tracking and analyzing such a volume of information is not possible. So, in this way, the use of algorithms for automatic analysis of texts and user comments is an important feature. Published articles and user comments in most cases are of a certain emotional aspect. This article analyzes texts and user comments of Kazakhstan media space. Sentiment classification is done using machine learning algorithms and convolutional and recurrent neural networks (CNN and RNN). A comparative review of the obtained results was performed after the classification.
分析社交媒体的机器学习和神经网络方法
互联网的快速发展导致新闻网站和社交网络的数量显著增加,这些网站和社交网络描述了世界和社会中的各种事件。人们积极地分享他们对世界上各种事件的看法。手动跟踪和分析如此大量的信息是不可能的。因此,在这种方式下,使用算法对文本和用户评论进行自动分析是一个重要的特征。发表的文章和用户评论大多带有一定的情感色彩。本文分析了哈萨克斯坦媒体空间的文本和用户评论。情感分类使用机器学习算法和卷积和循环神经网络(CNN和RNN)完成。分类后对获得的结果进行比较评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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