图神经网络与常用机器学习算法在假新闻检测中的比较分析

Fahim Mahmud, Mahi Md. Sadek Rayhan, Mahdi Hasan Shuvo, Islam Sadia, Md. Kishor Morol
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引用次数: 5

摘要

社交媒体上的假新闻越来越被视为最令人担忧的问题之一。低成本,通过社交平台的简单访问,以及大量低成本的在线新闻来源是导致虚假新闻传播的一些因素。现有的假新闻检测算法大多只关注新闻内容,但参与用户之前的帖子或社交活动提供了丰富的新闻观点信息,具有显著的提高假新闻识别能力。图神经网络是一种深度学习方法,用于对图描述的数据进行预测。社交媒体平台在其表示中遵循图结构,图神经网络是一种特殊类型的神经网络,通常可以应用于图,使其更容易执行边缘,节点和图级预测。因此,在本文中,我们对一些常用的机器学习算法和图神经网络进行了比较分析,以检测社交媒体平台上虚假新闻的传播。在本研究中,我们采用UPFD数据集,并仅在文本数据上实现几种现有的机器学习算法。此外,我们创建了不同的GNN层,用于融合图结构新闻传播数据和文本数据作为我们的GNN模型的节点特征。在我们的研究中,gnn为识别假新闻的困境提供了最佳解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A comparative analysis of Graph Neural Networks and commonly used machine learning algorithms on fake news detection
Fake news on social media is increasingly regarded as one of the most concerning issues. Low cost, simple accessibility via social platforms, and a plethora of low-budget online news sources are some of the factors that contribute to the spread of false news. Most of the existing fake news detection algorithms are solely focused on the news content only but engaged users' prior posts or social activities provide a wealth of information about their views on news and have significant ability to improve fake news identification. Graph Neural Networks are a form of deep learning approach that conducts prediction on graph-described data. Social media platforms are followed graph structure in their representation, Graph Neural Network are special types of neural networks that could be usually applied to graphs, making it much easier to execute edge, node and graph-level prediction. Therefore, in this paper, we present a comparative analysis among some commonly used machine learning algorithms and Graph Neural Networks for detecting the spread of false news on social media platforms. In this study, we take the UPFD dataset and implement several existing machine learning algorithms on text data only. Besides this, we create different GNN layers for fusing graph-structured news propagation data and the text data as the node feature in our GNN models. GNNs provide the best solutions to the dilemma of identifying false news in our research.
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