A CNN-RNN Based Fake News Detection Model Using Deep Learning

Qamber Abbas, M. Zeshan, Muhammad Asif
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引用次数: 1

Abstract

False news has become widespread in the last decade in political, economic, and social dimensions. This has been aided by the deep entrenchment of social media networking in these dimensions. Facebook and Twitter have been known to influence the behavior of people significantly. People rely on news/information posted on their favorite social media sites to make purchase decisions. Also, news posted on mainstream and social media platforms has a significant impact on a particular country’s economic stability and social tranquility. Therefore, there is a need to develop a deceptive system that evaluates the news to avoid the repercussions resulting from the rapid dispersion of fake news on social media platforms and other online platforms. To achieve this, the proposed system uses the preprocessing stage results to assign specific vectors to words. Each vector assigned to a word represents an intrinsic characteristic of the word. The resulting word vectors are then applied to RNN models before proceeding to the LSTM model. The output of the LSTM is used to determine whether the news article/piece is fake or otherwise.
基于CNN-RNN的深度学习假新闻检测模型
在过去十年中,假新闻在政治、经济和社会层面变得普遍。这得益于社交媒体网络在这些方面的深厚根基。众所周知,Facebook和Twitter会对人们的行为产生重大影响。人们依靠他们最喜欢的社交媒体网站上发布的新闻/信息来做出购买决定。此外,在主流媒体和社交媒体平台上发布的新闻对一个国家的经济稳定和社会安宁具有重要影响。因此,有必要开发一种对新闻进行评估的欺骗系统,以避免假新闻在社交媒体平台和其他在线平台上迅速传播所造成的影响。为了实现这一点,所提出的系统使用预处理阶段的结果来为单词分配特定的向量。分配给一个词的每个向量表示这个词的一个内在特征。然后将得到的词向量应用于RNN模型,然后再进行LSTM模型。LSTM的输出用于确定新闻文章/片段是假的还是假的。
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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