Intelligent Detection of Disinformation Based on Chronological and Spatial Topologies

Ruei-Hau Hsu, Bo Chen, Cheng-Jie Dai
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Abstract

As communication and high-speed internet make it easy to spread fake news on social media, scholars propose methods to detect it. However, existing approaches have limitations, such as reduced effectiveness without user information and high computational costs. Our proposed method, based on temporal and communication networks, is mainly used in the context of lack of user-related data and large textual datasets such as social media, forums, and online news. In sparse data settings, our proposed method can capture the propagation features of fake news for fake news detection, which is a feature extraction method based on building a propagation network for fake news detection. By studying the propagation pattern of fake news on social media, we obtain features belonging to the propagation network and test the source tweets using various machine learning classifiers. We also conduct experiments on realistic datasets to validate the method’s feasibility in social network scenarios.
基于时间和空间拓扑结构的虚假信息智能检测
由于通信和高速互联网使得假新闻在社交媒体上传播变得容易,学者们提出了检测假新闻的方法。然而,现有的方法存在局限性,例如没有用户信息的有效性降低和计算成本高。我们提出的基于时间网络和通信网络的方法主要用于缺乏用户相关数据和大型文本数据集(如社交媒体、论坛和在线新闻)的背景下。在稀疏数据设置下,我们提出的方法可以捕捉假新闻的传播特征进行假新闻检测,这是一种基于构建传播网络进行假新闻检测的特征提取方法。通过研究假新闻在社交媒体上的传播模式,我们获得了属于传播网络的特征,并使用各种机器学习分类器对源推文进行测试。我们还在现实数据集上进行了实验,以验证该方法在社交网络场景下的可行性。
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