论文标题

一种检测社交网络中动态社区的方法

An Approach for Detecting Dynamic Communities in Social Networks

论文作者

Boudebza, Souaad

论文摘要

互联网和技术的最新发展已在促进社交数据收集的工具上取得了重大进步,从而为分析社交网络提供了新的机会。社交网络分析研究社会关系的模式,旨在发现社交网络结构中嵌入的隐藏特征。社交网络中最重要的特征之一是社区结构:密集的成群的个人。社交网络中互动的动态性质通常会挑战这种社区结构的检测。本文的贡献分为两类。第一类突出了随着时间的推移确定重叠社区的问题。为了进行这样的分析,提出了一个称为OLCPM(在线标签传播和集团渗透方法)的框架。这是一种基于集团渗透和标签传播方法的在线算法。 OLCPM有两个主要特征:第一个是它发现重叠社区的能力,而第二个是其在处理细粒度的时间网络中的有效性。至于第二类,它强调了分析以不同时间尺度嵌入社区的问题。例如,在互动网络(例如电子邮件或电话)中,个人参与了每天和偶尔的对话。我们提出了一种在多个时间尺度上分析社区的第一种方法。因此,在不同的时间粒度上研究了动态网络(链接流),并在每个时间粒度的一段时间内检测到一段时间内相干社区(称为稳定社区)。在合成数据集和现实世界数据集上验证了两种建议的方法。

Recent developments in the internet and technology have made major advancements in tools that facilitate the collection of social data, opening up thus new opportunities for analyzing social networks. Social network analysis studies the patterns of social relations and aims at discovering the hidden features embedded in the structure of social networks. One of the most important features in social networks is community structure : densely knit groups of individuals. The dynamic nature of interaction in social networks often challenges the detection of such community structures. The contributions in this thesis fall into two categories.The first category highlights the problem of identifying overlapping communities over time. To carry out such analysis, a framework called OLCPM (Online Label propagation and Clique Percolation Method) is proposed. It is an online algorithm based on clique percolation and label propagation methods. OLCPM has two main features : the first one is its ability to discover overlapping communities, while the second is its effectiveness in handling fine-grained temporal net works. As for as the second category is concerned, it emphasizes on the problem of analyzing communities that are embedded at different temporal scales. For example, in networks of interaction such as e-mails or phone calls, individuals are involved in daily as well as occasional conversations. We propose a first method for analyzing communities at multiple temporal scales. Hence, the dynamic network (link streams) is studied at different temporal granularities, and coherent communities (called stable communities) over a period of time are detected at each temporal granularity. The two proposed approaches are validated on both synthetic and real-world datasets.

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