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Cross-Platform Identification of Anonymous Identical Users in Multiple Social Media Networks

机译:多个社交媒体网络中匿名相同用户的跨平台识别

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The last few years have witnessed the emergence and evolution of a vibrant research stream on a large variety of online social media network (SMN) platforms. Recognizing anonymous, yet identical users among multiple SMNs is still an intractable problem. Clearly, cross-platform exploration may help solve many problems in social computing in both theory and applications. Since public profiles can be duplicated and easily impersonated by users with different purposes, most current user identification resolutions, which mainly focus on text mining of users’ public profiles, are fragile. Some studies have attempted to match users based on the location and timing of user content as well as writing style. However, the locations are sparse in the majority of SMNs, and writing style is difficult to discern from the short sentences of leading SMNs such as Sina Microblog and Twitter. Moreover, since online SMNs are quite symmetric, existing user identification schemes based on network structure are not effective. The real-world friend cycle is highly individual and virtually no two users share a congruent friend cycle. Therefore, it is more accurate to use a friendship structure to analyze cross-platform SMNs. Since identical users tend to set up partial similar friendship structures in different SMNs, we proposed the Friend Relationship-Based User Identification (FRUI) algorithm. FRUI calculates a match degree for all candidate User Matched Pairs (UMPs), and only UMPs with top ranks are considered as identical users. We also developed two propositions to improve the efficiency of the algorithm. Results of extensive experiments demonstrate that FRUI performs much better than current network structure-based algorithms.
机译:在过去的几年中,目睹了各种在线社交媒体网络(SMN)平台上充满活力的研究流的出现和发展。在多个SMN之间识别匿名但相同的用户仍然是一个棘手的问题。显然,跨平台探索可能会在理论和应用方面帮助解决社会计算中的许多问题。由于公共配置文件可以被复制并容易被具有不同目的的用户模仿,因此大多数当前的用户标识解决方案(主要集中于用户公共配置文件的文本挖掘)很脆弱。一些研究试图根据用户内容的位置和时间以及写作风格来匹配用户。但是,大多数SMN的位置很少,并且很难从主要的SMN(如新浪微博和Twitter)的短句中辨别出写作风格。而且,由于在线SMN是相当对称的,所以基于网络结构的现有用户识别方案是无效的。现实世界中的朋友周期是高度个体的,几乎没有两个用户共享同一个朋友周期。因此,使用友谊结构来分析跨平台SMN更准确。由于相同的用户倾向于在不同的SMN中建立部分相似的友谊结构,因此我们提出了基于朋友关系的用户识别(FRUI)算法。 FRUI计算所有候选用户匹配对(UMP)的匹配度,只有具有最高排名的UMP才被视为同一用户。我们还提出了两个命题,以提高算法的效率。大量实验的结果表明,FRUI的性能比当前基于网络结构的算法要好得多。

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