在线媒体网络中假新闻检测的情感分析:综述、融合技术和质量指标

Mahmoud Ibrahim
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引用次数: 0

摘要

近年来网络媒体网站的发展带动了商业广告、政治新闻、名人新闻等内容共享的传播。各种社交媒体应用程序,如Facebook、Instagram和Twitter,都受到了假新闻的影响。由于通过网络媒体平台更容易获取和快速扩展数据,因此区分真假数据变得困难。通过在线媒体门户网站传播的大量新闻使得人工验证变得不切实际,这促使了检测假新闻的自动化方法的开发和部署。鉴于误导和欺骗的明显危险,假新闻研究越来越多地采用机器学习方法和情感分析。在本研究中,我们回顾了情感分析和机器学习方法在假新闻检测中的许多实现,以及最紧迫的困难和未来的研究前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sentiment Analysis for Fake News Detection in Online Media Networks: A survey, fusion techniques and quality metrics
The development of Online media sites in recent years has led to the spread of content sharing like commercial advertisements, political news, celebrity news, and so on. Various social media applications, such as Facebook, Instagram, and Twitter, have been impacted by fake news. Due to the easier access and rapid expansion of data through online media platforms, distinguishing between fake and real data has become difficult. The massive volume of news transmitted over online media portals makes manual verification impractical, which has prompted the development and deployment of automated methods for detecting fake news. Given the clear dangers of misleading and deception, fake news study has seen an increase in efforts that employ machine learning approaches, and sentiment analysis. In this study, we review the many implementations of sentiment analysis and machine learning methodologies in the fake news detection, as well as the most pressing difficulties and future research prospects.
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