链接:可视化多个在线社交网络的用户身份链接结果

R. Lee, Ming Shan Hee, Philips Kokoh Prasetyo, Ee-Peng Lim
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引用次数: 4

摘要

跨在线社交网络的用户身份链接是近年来备受关注的新兴研究课题。目前已经提出了许多用户身份关联方法,大多数都是利用用户的个人资料、内容和网络信息来确定两个社交媒体账户是否属于同一个人。在大多数情况下,用户身份链接方法是通过执行一些预测任务来评估的,这些预测任务使用一些总体精度度量来呈现结果。然而,这些方法很少在个人用户级别上进行比较,在个人用户级别上,来自不同在线社交网络的预测匹配(或链接)用户身份对可以在用户配置文件(例如用户名),内容和网络信息方面进行可视化比较。这种比较对于确定每种方法的相对优势和劣势至关重要。在这项工作中,我们提出了link,一个可视化分析工具,它从多个在线社交网络上执行的不同用户身份链接方法中提取结果,并将链接用户身份的用户档案,内容和自我网络可视化。link旨在帮助研究人员(a)在个人用户层面检查被链接的用户身份,(b)比较不同用户链接方法返回的结果,以及(c)对用户身份的哪些方面(例如个人资料、内容或网络)促成了用户身份链接结果提供初步的经验理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Linky: Visualizing User Identity Linkage Results for Multiple Online Social Networks
User identity linkage across online social networks is an emerging research topic that has attracted attention in recent years. Many user identity linkage methods have been proposed so far and most of them utilize user profile, content and network information to determine if two social media accounts belong to the same person. In most cases, user identity linkage methods are evaluated by performing some prediction tasks with the results presented using some overall accuracy measures. However, the methods are rarely compared at the individual user level where a predicted matched (or linked) pair of user identities from different online social networks can be visually compared in terms of user profile (e.g. username), content and network information. Such a comparison is critical to determine the relative strengths and weaknesses of each method. In this work, we present Linky, a visual analytical tool which extracts the results from different user identity linkage methods performed on multiple online social networks and visualizes the user profiles, content and ego networks of the linked user identities. Linky is designed to help researchers to (a) inspect the linked user identities at the individual user level, (b) compare results returned by different user linkage methods, and (c) provide a preliminary empirical understanding on which aspects of the user identities, e.g. profile, content or network, contributed to the user identity linkage results.
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