基于双层惩罚逻辑分类器的在线社交网络僵尸账户检测

Jing Deng, Xiaoli Gao, Chunyue Wang
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引用次数: 2

摘要

在线社交网络的巨大普及和潜在的经济收益导致了僵尸账户(即虚假用户账户)的创建和扩散。只要支付相当数额的费用,僵尸账户就可以在其经理的指导下,对不同的社会事件或商业产品的质量做出预先安排的有偏见的反应。因此,检测和筛选这些账户至关重要。在正常/僵尸账户的分类过程中,现有技术要么不准确,要么严重依赖复杂的发布/推文行为。在这项工作中,我们建议使用双层惩罚逻辑分类器,一种高效的高维数据分析技术,根据公开的个人资料信息和关注者注册地点的统计数据来检测僵尸账户。我们的方法被称为(B)i-level (P)enalized (LO) logistic (C) classifier (BPLOC),具有数据适应性,可以扩展到更准确的检测。我们的实验结果是基于少量的新浪微博账户,并证明了BPLOC可以准确地分类僵尸账户。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Bi-level Penalized Logistic Classifier to Detect Zombie Accounts in Online Social Networks
The huge popularity of online social networks and the potential financial gain have led to the creation and proliferation of zombie accounts, i.e., fake user accounts. For considerable amount of payment, zombie accounts can be directed by their managers to provide pre-arranged biased reactions to different social events or the quality of a commercial product. It is thus critical to detect and screen these accounts. Prior arts are either inaccurate or relying heavily on complex posting/tweeting behaviors in the classification process of normal/zombie accounts. In this work, we propose to use a bi-level penalized logistic classifier, an efficient high-dimensional data analysis technique, to detect zombie accounts based on their publicly available profile information and the statistics of their followers' registration locations. Our approach, termed (B)i-level (P)enalized (LO)gistic (C)lassifier (BPLOC), is data adaptive and can be extended to mount more accurate detections. Our experimental results are based on a small number of SINA WeiBo accounts and have demonstrated that BPLOC can classify zombie accounts accurately.
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