Alias Detection Across Multi-online Applications Based on User's Behavior Characteristics

Zhaoli Liu, Tao Qin, X. Guan, Xiaoqiang Niu, Tao Yang
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引用次数: 0

Abstract

The quickly development of many online applications benefit our daily life. But on the other hand, user usually holds several aliases in different online applications. The aliases across multi-online applications detection are becoming more and more important for E-marketing and user's behavior monitoring. In this paper, we propose a method for detecting aliases across multi-online applications. Firstly, we employ the active and positive methods to collect the user's alias and behavior information from several famous applications, including Email, RenRen and etc. Then we analyzed the user's behavior characteristics in specific applications, and some interesting findings are proposed. Finally, we perform the alias detection based on user's behavior profiles, including the similarity of the ID and the number of appearance in specific IP address. According to user's behavior habit, the aliases belong to the same physical users are usually similar with each other. Furthermore, one specific user usually use the same computer to login into different applications, thus the IP addresses used for accessing those applications usually same with each other. Based on those assumptions we employ the Bayesian Network to perform alias detection. Empirical results based on actual data verify the efficiency and correctness of the proposed methods.
基于用户行为特征的多在线应用别名检测
许多在线应用程序的快速发展使我们的日常生活受益。但另一方面,用户通常在不同的在线应用程序中使用多个别名。跨多在线应用的别名检测在网络营销和用户行为监控中变得越来越重要。在本文中,我们提出了一种跨多在线应用程序检测别名的方法。首先,我们采用主动和主动的方法,从几个著名的应用程序中收集用户的别名和行为信息,包括Email,人人网等。然后,我们分析了用户在特定应用中的行为特征,并提出了一些有趣的发现。最后,我们根据用户的行为特征,包括ID的相似度和特定IP地址的出现次数,执行别名检测。根据用户的行为习惯,属于同一物理用户的别名通常彼此相似。此外,一个特定的用户通常使用同一台计算机登录到不同的应用程序,因此用于访问这些应用程序的IP地址通常彼此相同。基于这些假设,我们使用贝叶斯网络来执行别名检测。基于实际数据的实证结果验证了所提方法的有效性和正确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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