真实性:用于MANET消息传递的假新闻检测体系结构

A. Ramkissoon, W. Goodridge
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引用次数: 0

摘要

移动自组织网络消息传递已成为当今社会通信领域不可或缺的一部分。它们被用于各种各样的应用。这些网络面临的一个主要问题是假新闻的传播。这个问题会对我们这个数据驱动的社会产生严重的有害影响。事实证明,即使对现代算法来说,检测假新闻也是一项挑战。本研究提出了一种独特的计算社会系统Veracity来完成MANET消息传递中的假新闻检测任务。Veracity架构试图模拟社会行为和人类对通过MANET传播的新闻的反应。Veracity引入了五种新的算法,即VerifyNews、CompareText、PredictCred、CredScore和EyeTruth,用于捕获、计算和分析可信度和内容数据特征。Veracity体系结构在完全分布式和无基础设施的环境中工作。本研究使用生成的数据集验证了准确性,该数据集具有与新闻出版商的可信度和消息内容相关的特征,以预测假新闻。使用机器学习预测模型分析这些特征。用四种评价方法对实验结果进行了分析。分析表明,使用假新闻检测架构具有积极的性能。
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Veracity: A Fake News Detection Architecture for MANET Messaging
Mobile Ad Hoc Network Messaging has become an integral part of today’s social communication landscape. They are used in a variety of applications. One major problem that these networks face is the spread of fake news. This problem can have serious deleterious effects on our social data driven society. Detecting fake news has proven to be challenging even for modern day algorithms. This research presents, Veracity, a unique computational social system to accomplish the task of Fake News Detection in MANET Messaging. The Veracity architecture attempts to model social behaviour and human reactions to news spread over a MANET. Veracity introduces five new algorithms namely, VerifyNews, CompareText, PredictCred, CredScore and EyeTruth for the capture, computation and analysis of the credibility and content data features. The Veracity architecture works in a fully distributed and infrastructureless environment. This study validates Veracity using a generated dataset with features relating to the credibility of news publishers and the content of the message to predict fake news. These features are analysed using a machine learning prediction model. The results of these experiments are analysed using four evaluation methodologies. The analysis reveals positive performance with the use of the fake news detection architecture.
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