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Intelligent Sybil Attack Detection on Abnormal Connectivity Behavior in Mobile Social Networks

机译:智能Sybil攻击对移动社交网络异常连接行为的攻击检测

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There have been a large number of researches on mobile networks in the literature, focusing on a variety of secured applications over the network, including the use of their connections, fake identification and attacks on social group. These applications are created for the intention to collect confidential information, money laundering, blackmailing and to perform other crime activity. The purpose of this research is to identify the behavior of the honest node (network account) and fake node (network account) on mobile social network. In this research, the behavior survey of these nodes is carried out and further analysed with the help of graph-based Sybil detection system. This paper particularly studies Sybil attacks and its defense system for IoT (Internet-of-Things) environment. To be implied, the identification of each forged Sybil node is to be tracked on the basis of nodes connectivity and their timing of connectivity as well as frequency among each other. Sybil node has a forged identity in different locations and also reports its virtual location information to servers.
机译:在文献中有大量研究移动网络,专注于网络上的各种安全应用,包括使用它们的连接,假识别和对社会群体的攻击。这些申请是为了收集机密信息,洗钱,勒索和执行其他犯罪活动的意图。本研究的目的是识别移动社交网络上诚实节点(网络帐户)和假节点(网络帐户)的行为。在该研究中,在基于图形的Sybil检测系统的帮助下进行了对这些节点的行为调查,并进一步分析。本文特别研究了Sybil攻击及其国防系统的IOT(互联网)环境。要暗示,基于节点连接及其连接时以及彼此之间的频率来跟踪每个锻造Sybil节点的识别。 Sybil节点在不同位置具有伪造的标识,并将其虚拟位置信息报告给服务器。

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