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Deep Graph neural network-based spammer detection under the perspective of heterogeneous cyberspace

机译:基于深图的神经网络垃圾邮件发送者在异构网络空间的角度下

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摘要

Due to the severe threat to cyberspace security, detection of online spammers has been a universal concern of academia. Nowadays, prevailing literature of this field almost leveraged various relations to enhance feature spaces. However, they majorly focused stable or visible relations, yet neglected the existence of those which are generated occasionally. Exactly, some latent feature components can be extracted from the view of heterogeneous information networks. Thus, this paper proposes a Deep Graph neural network-based Spammer detection (DeG-Spam) model under the perspective of heterogeneous cyberspace. Specifically, representations for occasional relations and inherent relations are separately modelled. Based on this, a graph neural network framework is formulated to generate feature expressions for the social graph. With more feature components being mined, acquirement of stronger and more comprehensive feature spaces ensures the accuracy of spammer detection. At last, fruitful experiments are carried out on two benchmark datasets to compare the DeG-Spam with typical spammer detection approaches. Experimental results show that it performs about 5%-10% better than baselines.
机译:由于对网络空间安全的严重威胁,检测在线垃圾邮件发送者一直是学术界的普遍关注。如今,这一领域的普遍文献几乎利用各种关系来增强特征空间。然而,它们主要集中于稳定或可见的关系,但忽略了那些偶尔生成的那些。正是,可以从异构信息网络的视图中提取一些潜在特征组件。因此,本文提出了在异构网络空间的视角下的深图神经网络垃圾邮件发送器检测(DEG-SPAM)模型。具体地,偶尔关系和固有关系的表示是单独建模的。基于此,配制了一个图形神经网络框架以生成社交图表的特征表达式。通过开采更多的特征组件,获取更强更全面的特征空间可确保垃圾邮件发送检测的准确性。最后,在两个基准数据集中进行了富有成效的实验,以比较典型垃圾邮件发送方法的DEG-垃圾邮件。实验结果表明,它比基线表现出约5%-10%。

著录项

  • 来源
    《Future generation computer systems》 |2021年第4期|205-218|共14页
  • 作者单位

    School of Artificial Intelligence National Research Base of Intelligent Manufacturing Service Chongqing Technology and Business University Chongqing 400067 China;

    School of Artificial Intelligence National Research Base of Intelligent Manufacturing Service Chongqing Technology and Business University Chongqing 400067 China;

    School of Communication and Information Engineering Chongqing University of Posts and Telecommunications Chongqing 400065 China;

    Global Information and Telecommunication Institute Waseda University Shinjuku Tokyo 169-8050 Japan;

    College of Engineering IT and Environment Charles Darwin University Australia;

    Department of Information Security and Communication Technology Norwegian University of Science and Technology Gjovik Norway;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Cyberspace security; Spammer detection; Graph neural network; Heterogeneous social graph;

    机译:网络空间安全;垃圾邮件发送器检测;图形神经网络;异质社会图;
  • 入库时间 2022-08-18 23:26:54

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