一种方式不适合所有人:分析个性化的、随时间变化的用户行为

Pravallika Devineni, E. Papalexakis, Danai Koutra, A. Seza Doğruöz, M. Faloutsos
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引用次数: 8

摘要

给定用户的社交交互集,我们如何检测交互模式随时间的变化?虽然大多数先前的工作都集中在研究网络范围的属性和发现异常用户,但个人用户交互的动态仍然在很大程度上未被探索。这项工作旨在以一种对隐私侵犯最小的方式探索这些动态,从而避免依赖于用户帖子的文本内容——除了验证。我们的贡献是双重的。首先,与以前的研究相反,我们挑战使用固定的观察间隔。我们引入并实证验证了“时间不对称假说”,该假说指出,对于同一用户,适当的观察间隔应该在用户之间和随着时间的推移而变化。我们使用八个不同的数据集来验证这一假设,包括电子邮件、短信和社交网络数据。其次,我们提出了iNET,这是一个全面的分析和可视化框架,它提供了对用户行为的个性化见解,并以流媒体方式运行。iNET学习用户的个性化基线行为,并使用它们来识别表明用户行为变化的事件。我们通过分析来自Facebook用户的50多万次互动来评估iNET的有效性。对已识别的用户行为变化进行标记表明,iNET能够捕获外源性和内源性事件的广泛范围,而基线在性质上的多样性较低,仅捕获该范围的66%。此外,与所有竞争方法相比,iNET具有最高的精度(95%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
One Size Does Not Fit All: Profiling Personalized Time-Evolving User Behaviors
Given the set of social interactions of a user, how can we detect changes in interaction patterns over time? While most previous work has focused on studying network-wide properties and spotting outlier users, the dynamics of individual user interactions remain largely unexplored. This work sets out to explore those dynamics in a way that is minimally invasive to privacy, thus, avoids to rely on the textual content of user posts---except for validation. Our contributions are two-fold. First, in contrast to previous studies, we challenge the use of a fixed interval of observation. We introduce and empirically validate the "Temporal Asymmetry Hypothesis", which states that appropriate observation intervals should vary both among users and over time for the same user. We validate this hypothesis using eight different datasets, including email, messaging, and social networks data. Second, we propose iNET, a comprehensive analytic and visualization framework which provides personalized insights into user behavior and operates in a streaming fashion. iNET learns personalized baseline behaviors of users and uses them to identify events that signify changes in user behavior. We evaluate the effectiveness of iNET by analyzing more than half a million interactions from Facebook users. Labeling of the identified changes in user behavior showed that iNET is able to capture a wide spectrum of exogenous and endogenous events, while the baselines are less diverse in nature and capture only 66% of that spectrum. Furthermore, iNET exhibited the highest precision (95%) compared to all competing approaches.
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