Maham Shiza, Tariq Abdullah, Khan Muhammad Usman Ghani, Alamri Faten S, Rehman Amjad, Saba Tanzila
National Center of Artificial Intelligence, Al-Khawarizmi Institute of Computer Science, UET, Lahore, Pakistan.
Artificial Intelligence & Data Analytics Lab (AIDA) CCIS Prince Sultan University, 11586, Riyadh, Saudi Arabia.
Sci Rep. 2024 Apr 3;14(1):7897. doi: 10.1038/s41598-024-56567-4.
With easy access to social media platforms, spreading fake news has become a growing concern today. Classifying fake news is essential, as it can help prevent its negative impact on individuals and society. In this regard, an end-to-end framework for fake news detection is developed by utilizing the power of adversarial training to make the model more robust and resilient. The framework is named "ANN: Adversarial News Net," emoticons have been extracted from the datasets to understand their meanings concerning fake news. This information is then fed into the model, which helps to improve its performance in classifying fake news. The performance of the ANN framework is evaluated using four publicly available datasets, and it is found to outperform baseline methods and previous studies after adversarial training. Experiments show that Adversarial Training improved the performance by 2.1% over the Random Forest baseline and 2.4% over the BERT baseline method in terms of accuracy. The proposed framework can be used to detect fake news in real-time, thereby mitigating its harmful effects on society.
随着社交媒体平台的便捷使用,传播虚假新闻已成为当今日益令人担忧的问题。对虚假新闻进行分类至关重要,因为这有助于防止其对个人和社会产生负面影响。在这方面,通过利用对抗训练的力量开发了一个用于虚假新闻检测的端到端框架,以使模型更强大、更具弹性。该框架名为“ANN:对抗新闻网络”,已从数据集中提取表情符号以了解它们与虚假新闻相关的含义。然后将此信息输入模型,这有助于提高其在分类虚假新闻方面的性能。使用四个公开可用的数据集评估了ANN框架的性能,发现经过对抗训练后它优于基线方法和先前的研究。实验表明,在准确率方面,对抗训练比随机森林基线提高了2.1%,比BERT基线方法提高了2.4%。所提出的框架可用于实时检测虚假新闻,从而减轻其对社会的有害影响。