整合元搜索和两级分类,利用特征优化加强假新闻检测

Poonam Narang, Ajay Vikram Singh, Himanshu Monga
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引用次数: 0

摘要

引言:尽管社交媒体对舆论产生了重大影响,但传播虚假信息的挑战依然存在。本研究提出的框架是一种元搜索方法,用于检测虚假新闻。该方法采用了一种与 Bi-LSTM 相结合的混合元启发式 RDAVA 方法,利用了非洲秃鹫优化器和红鹿优化器:方法:利用 BuzzFeed、FakeNewsNet 和 ISOT 的数据集,在 MATLAB 平台上实现了所建议的模型,该模型在 FakeNewsNet 上获得了 97% 的高准确率,在 BuzzFeed 和 ISOT 上获得了 98% 的高准确率。结果:所建议的模型在 BuzzFeed/ISOT 和 FakeNewsNet 上的准确率分别为 98% 和 97%,优于之前的模型,显示出卓越的性能。结论:所建议的策略有望通过有效打击假新闻来解决当今社交媒体上的虚假信息问题。它结合了社交网络分析方法和元启发式方法,是识别虚假新闻的有力工具。
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Integrating Metaheuristics and Two-Tiered Classification for Enhanced Fake News Detection with Feature Optimization
INTRODUCTION: The challenge of distributing false information continues despite the significant impact of social media on opinions. The suggested framework, which is a metaheuristic method, is presented in this research to detect bogus news. Employing a hybrid metaheuristic RDAVA methodology coupled with Bi-LSTM, the method leverages African Vulture Optimizer and Red Deer Optimizer.OBJECTIVES: The objective of this study is to assess the effectiveness of the suggested model in identifying false material on social media by employing social network analysis tools to combat disinformation.METHODS: Employing the data sets from BuzzFeed, FakeNewsNet, and ISOT, the suggested model is implemented on the MATLAB Platform and acquires high accuracy rates of 97% on FakeNewsNet and 98% on BuzzFeed and ISOT. A comparative study with current models demonstrates its superiority.RESULTS: Outperforming previous models with 98% and 97% accuracy on BuzzFeed/ISOT and FakeNewsNet, respectively, the suggested model shows remarkable performance.CONCLUSION: The proposed strategy shows promise in addressing the problem of false information on social media in the modern day by effectively countering fake news. Its incorporation of social network analysis methods and metaheuristic methodologies makes it a powerful instrument for identifying false news.
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