Detecting Compromised Social Network Accounts Using Deep Learning for Behavior and Text Analyses

Steven Yen, M. Moh, Teng-Sheng Moh
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引用次数: 14

Abstract

Social networks allow people to connect to one another. Over time, these accounts become an essential part of one's online identity. The account stores various personal data and contains one's network of acquaintances. Attackers seek to compromise user accounts for various malicious purposes, such as distributing spam, phishing, and much more. Timely detection of compromises becomes crucial for protecting users and social networks. This article proposes a novel system for detecting compromises of a social network account by considering both post behavior and textual content. A deep multi-layer perceptron-based autoencoder is leveraged to consolidate diverse features and extract underlying relationships. Experiments show that the proposed system outperforms previous techniques that considered only behavioral information. The authors believe that this work is well-timed, significant especially in the world that has been largely locked down by the COVID-19 pandemic and thus depends much more on reliable social networks to stay connected.
使用深度学习进行行为和文本分析来检测受损的社交网络帐户
社交网络允许人们彼此联系。随着时间的推移,这些账户成为一个人在线身份的重要组成部分。该账户存储了各种个人数据,并包含了一个人的熟人网络。攻击者试图破坏用户帐户,以达到各种恶意目的,例如分发垃圾邮件、网络钓鱼等等。及时发现威胁对于保护用户和社交网络至关重要。本文提出了一种通过考虑帖子行为和文本内容来检测社交网络帐户妥协的新系统。利用深度多层感知器的自编码器来整合不同的特征并提取潜在的关系。实验表明,所提出的系统优于先前仅考虑行为信息的技术。作者认为,这项工作恰逢其时,尤其是在因COVID-19大流行而基本上被封锁的世界,因此更多地依赖于可靠的社交网络来保持联系,这一点尤为重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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