计算机科学
社会化媒体
人工智能
可靠性
深度学习
情绪分析
机器学习
图层(电子)
特征工程
假新闻
情报检索
自然语言处理
万维网
化学
有机化学
互联网隐私
政治学
法学
作者
Ganesh Gopal Devarajan,Senthil Murugan Nagarajan,Sardar Irfanullah Amanullah,S. A. Sahaaya Arul Mary,Ali Kashif Bashir
标识
DOI:10.1109/tcss.2023.3259480
摘要
Social networking websites are now considered to be the best platforms for the dissemination of news articles. However, information sharing in social media platforms leads to explosion of fake news. Traditional detection methods were focusing on content analysis, while the current researchers examining social features of the news. In this work, we proposed a novel artificial intelligence (AI)-assisted fake news detection with deep natural language processing (NLP) model. The proposed work is characterized in four layers: publisher layer, social media networking layer, enabled edge layer, and cloud layer. In this work, four steps were carried out: 1) data acquisition; 2) information retrieval (IR); 3) NLP-based data processing and feature extraction; and 4) deep learning-based classification model that classifies news articles as fake or real using credibility score of publishers, users, messages, headlines, and so on. Three datasets, such as Buzzface, FakeNewsNet, and Twitter, were used for evaluation of the proposed model, and simulation results were computed. This proposed model obtained an average accuracy of 99.72% and an $F1$ score of 98.33%, which outperforms other existing methods.
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