在线社交网络异常检测综述

R. H. Elghanuni, Musab A. M. Ali, Marwa B. Swidan
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引用次数: 3

摘要

社交网络正迅速成为我们日常活动的一部分。在在线社交网络(OSN)环境中,存在着海量的可获取信息,并被广泛应用于各个领域;如在虚拟社区中提供信息共享,建立人与人之间的关系,抓捕罪犯,侦查恐怖分子和非法活动。通过对OSN的分析,可以推断出两种类型的数据,一种是依赖于用户动态行为的行为数据,另一种是包含网络结构的结构数据。在社交网络中,有大量的异常现象。例如;身份盗窃,黑客账户,假账户,垃圾邮件和许多其他非法活动,为此,需要一种方法来检测这些异常。对于异常检测的研究有很多,但据我们所知,在图异常检测方面的研究非常有限。然而,由于时间复杂、数据集缺乏、准确性低等原因,使用各种数据挖掘方法的研究前景并不乐观。本文试图介绍和讨论以往提出的OSN异常检测工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Overview of Anomaly Detection for Online Social Network
Social networks are rapidly becoming part of our everyday activities. In online social network (OSN) environment, there is a huge amount of information which is available and widely used for various areas; such as provide the sharing of information and create relationship between people in a virtual community, capturing the criminals, detect terrorist and unlawful activities. Based on analyzing the OSN, there are two types of data that are inferred, first is behavioral data which depends on the dynamic behaviors of the user, and second is structural data which includes network structure. In social networking, there are enormous of anomalies. For instance; identity theft, hack account, fake account, spams and many other illegitimate activities, for this reason, there is a need for a way to detect these anomalies. There are many studies that conducted to detect the anomaly, but to the best of our knowledge, there were very limited researches carried out in the graph anomaly detection. However, those researches which used various data mining approaches are not promising, due to time complexity, lack of datasets, and lower accuracy. This paper attempts to present and discuss the previous works proposed to detect the anomalies on the OSN.
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