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首页> 外文期刊>International Journal of Bio-Inspired Computation >A meta-heuristic learning approach for the non-intrusive detection of impersonation attacks in social networks
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A meta-heuristic learning approach for the non-intrusive detection of impersonation attacks in social networks

机译:社交网络非侵扰性攻击非侵入性检测的元启发式学习方法

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p>Cyber attacks have recently gained momentum in the research community as a sharply concerning phenomenon further ignited by the proliferation of social networks, which unfold a variety of ways for cybercriminals to access compromised information of their users. This paper gravitates on impersonation attacks, whose motivation may go beyond economic interests of the attacker towards getting unauthorised access to information and contacts, as often occurs between teenagers and early users of social platforms. This manuscript proposes a meta-heuristically optimised learning model as the algorithmic core of a non-intrusive detection system that relies exclusively on connection time features to detect evidences of an impersonation attack. The proposed scheme hinges on the K-Means clustering approach applied to a set of time features specially tailored to characterise the usage of users, which are weighted prior to the clustering under detection performance maximisation criteria. The obtained results shed light on the potentiality of the proposed methodology for its practical application to real social networks./p>
机译:& p>网络攻击最近在研究界中获得了势头,因为社交网络的扩散进一步点燃的现象大幅度,这展开了各种方法对于网络犯罪分子来获取其用户的受损信息。这篇论文探讨了模拟攻击,其动机可能超越攻击者的经济利益,以便在社交平台的青少年和早期用户之间发生未经授权的信息和联系人。该稿件提出了一个元启发式优化的学习模型作为非侵入式检测系统的算法核心,其专门依赖于连接时间特征来检测模拟攻击的证据。所提出的方案对K-means聚类方法的铰接应用于一组时间特征,专门定制,以表征用户的使用,这些功能在检测性能最大化标准下进行群集之前加权。所获得的结果阐明了所提出的方法的潜在能力,使其对真正的社交网络的实际应用。& / p>

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