Mining Spam Accounts with User Influence

Kan Chen, Peidong Zhu, Yueshan Xiong
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引用次数: 3

Abstract

As the increasing development of online social networks (OSNs), spammers' attentions have been attracted from the traditional email field. Nowadays, advertisements, deception messages, illegal contents are prevalent in all kinds of ONSs. They're propagated from one to another arbitrarily, polluting the Internet environment, and what's more, resulting in a great many of security problems. Some previous works have been proposed to detect spammers according to user properties. The problem is that in order to prevent from being detected, spammers are likely to pretend to be normal, and what's more, some normal users also engage into spam spreading for financial benefits, making detection more difficult. In this paper, we solve the detection problem from the view of user influence. The basic of our work is that since spammers pretend to be normal, their influences should keep step with their normal behaviors. But when a spam campaign is launched, usually in order to influent others, a great many of spammers engaged into propagation, the original poster's influence would get a sudden increase, making him outstanding from the others. In this way, we can distinguish the original spammers and supervise from the root of the propagation tree. Our work is experimented on real data gathered from Weibo and shows inspiring results.
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挖掘具有用户影响力的垃圾账户
随着在线社交网络的日益发展,垃圾邮件发送者的注意力已经从传统的电子邮件领域吸引过来。如今,各种网络服务中充斥着广告、欺骗信息、非法内容。它们被任意地从一个传播到另一个,污染了互联网环境,更严重的是,造成了许多安全问题。以前的一些工作已经提出了根据用户属性来检测垃圾邮件发送者。问题是,为了不被发现,垃圾邮件发送者可能会假装正常,而且一些正常用户也会为了经济利益而参与垃圾邮件的传播,这使得检测更加困难。本文从用户影响的角度来解决检测问题。我们工作的基础是,既然垃圾邮件发送者假装正常,他们的影响应该与他们的正常行为保持同步。但是当一个垃圾邮件活动启动后,通常是为了影响他人,大量的垃圾邮件发送者参与传播,原发帖者的影响力会突然增加,使他从其他人中脱颖而出。通过这种方法,我们可以从传播树的根上区分原始垃圾邮件发送者并进行监督。我们的工作是在微博上收集的真实数据上进行实验的,结果令人鼓舞。
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