应用深度学习算法检测虚假和正确的文本或口头新闻

S. Dadvandipour, Yahya Layth Khaleel
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引用次数: 0

摘要

摘要信息技术和社交媒体网站的不断传播和扩展,使人们更容易通过这些平台获取不同类型的新闻——政治、经济、医疗、社会等。然而,新闻媒体的快速增长和对信息的需求模糊了真假新闻的界限,导致了假新闻的传播,这是一种危险的状态。冠状病毒大流行的爆发和对全球构成的威胁的认识。人们注意到,虚假新闻和谣言,如未经证实的言论和欺骗性的想法,也在同步增加。本研究的主要目的是在未来通过应用深度学习算法(LSTM, Bi-LSTM, BERT)来克服这些问题,使用大型数据集(39279行)来识别虚假和正确的文本或口头新闻。使用不同算法的深度学习应用结果表明,BERT模型表现最好,实现了96.63%的文本分类准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of deep learning algorithms detecting fake and correct textual or verbal news
Abstract. The ongoing spread and expansion of information technology and social media sites have made it easier for people to access different types of news – political, economic, medical, social, etc. through these platforms. However, this rapid growth in news outlets and the demand for information has blurred the lines between real and fake news and led to the dissemination of fake news, which is a dangerous state of affairs. The outbreak of the coronavirus pandemic and awareness of the threats posed all across the globe. And a parallel rise in fake news and rumors, like unsubstantiated statements and deceptive ideas, were noticed. The main aim of this study is supposed to set out to overcome these kinds of problems in the future with the application of deep learning algorithms (LSTM, Bi-LSTM, BERT), using a large dataset (39279 rows) to identify fake and correct textual or verbal news. The results of the deep learning application using different algorithms show that the BERT model performed the best, achieving a text classification accuracy of 96.63 %.
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