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TargetVue:在线通信系统中异常用户行为的可视化分析

TargetVue: Visual Analysis of Anomalous User Behaviors in Online Communication Systems.

作者信息

Cao Nan, Shi Conglei, Lin Sabrina, Lu Jie, Lin Yu-Ru, Lin Ching-Yung

出版信息

IEEE Trans Vis Comput Graph. 2016 Jan;22(1):280-9. doi: 10.1109/TVCG.2015.2467196.

DOI:10.1109/TVCG.2015.2467196
PMID:26529707
Abstract

Users with anomalous behaviors in online communication systems (e.g. email and social medial platforms) are potential threats to society. Automated anomaly detection based on advanced machine learning techniques has been developed to combat this issue; challenges remain, though, due to the difficulty of obtaining proper ground truth for model training and evaluation. Therefore, substantial human judgment on the automated analysis results is often required to better adjust the performance of anomaly detection. Unfortunately, techniques that allow users to understand the analysis results more efficiently, to make a confident judgment about anomalies, and to explore data in their context, are still lacking. In this paper, we propose a novel visual analysis system, TargetVue, which detects anomalous users via an unsupervised learning model and visualizes the behaviors of suspicious users in behavior-rich context through novel visualization designs and multiple coordinated contextual views. Particularly, TargetVue incorporates three new ego-centric glyphs to visually summarize a user's behaviors which effectively present the user's communication activities, features, and social interactions. An efficient layout method is proposed to place these glyphs on a triangle grid, which captures similarities among users and facilitates comparisons of behaviors of different users. We demonstrate the power of TargetVue through its application in a social bot detection challenge using Twitter data, a case study based on email records, and an interview with expert users. Our evaluation shows that TargetVue is beneficial to the detection of users with anomalous communication behaviors.

摘要

在线通信系统(如电子邮件和社交媒体平台)中行为异常的用户对社会构成潜在威胁。基于先进机器学习技术的自动异常检测已被开发出来应对这一问题;然而,由于难以获得用于模型训练和评估的合适的真实数据,挑战依然存在。因此,通常需要大量人力对自动分析结果进行判断,以更好地调整异常检测的性能。不幸的是,目前仍缺乏能让用户更高效地理解分析结果、对异常情况做出可靠判断并在其背景下探索数据的技术。在本文中,我们提出了一种新颖的可视化分析系统TargetVue,它通过无监督学习模型检测异常用户,并通过新颖的可视化设计和多个相互协调的上下文视图,在丰富行为背景中可视化可疑用户的行为。特别是,TargetVue引入了三种新的以自我为中心的图形符号,以直观地总结用户行为,这些图形符号有效地展示了用户的通信活动、特征和社交互动。我们提出了一种高效的布局方法,将这些图形符号放置在三角形网格上,该网格捕捉用户之间的相似性,并便于比较不同用户的行为。我们通过将TargetVue应用于使用推特数据的社交机器人检测挑战、基于电子邮件记录的案例研究以及对专家用户的访谈,展示了TargetVue的强大功能。我们的评估表明,TargetVue有助于检测具有异常通信行为的用户。

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