Incremental Community Mining in Location-based Social Network

Loubna Boujlaleb, A. Idarrou, D. Mammass
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引用次数: 0

Abstract

A social network can be defined as a set of social entities connected by a set of social relations. These relations often change and differ in time. Thus, the fundamental structure of these networks is dynamic and increasingly developing. Investigating how the structure of these networks evolves over the observation time affords visions into their evolution structure, elements that initiate the changes, and finally foresee the future structure of these networks. One of the most relevant properties of networks is their community structure – set of vertices highly connected between each other and loosely connected with the rest of the network. Subsequently networks are dynamic, their underlying community structure changes over time as well, i.e they have social entities that appear and disappear which make their communities shrinking and growing over time. The goal of this paper is to study community detection in dynamic social network in the context of location-based social network. In this respect, we extend the static Louvain method to incrementally detect communities in a dynamic scenario following the direct method and considering both overlapping and non-overlapping setting. Finally, extensive experiments on real datasets and comparison with two previous methods demonstrate the effectiveness and potential of our suggested method.
基于位置的社交网络中的增量社区挖掘
社会网络可以定义为由一系列社会关系连接起来的一组社会实体。这些关系在时间上经常变化和不同。因此,这些网络的基本结构是动态的和不断发展的。研究这些网络的结构如何随着观测时间的推移而演变,可以让我们看到它们的演变结构、引发变化的因素,并最终预见这些网络的未来结构。网络最相关的属性之一是它们的社区结构——一组彼此高度连接、与网络其他部分松散连接的顶点。因此,网络是动态的,其潜在的社区结构也随着时间的推移而变化,即它们有出现和消失的社会实体,这使得它们的社区随着时间的推移而缩小和增长。本文的目标是在基于位置的社交网络背景下研究动态社交网络中的社区检测。在这方面,我们扩展了静态Louvain方法,在动态场景中遵循直接方法增量检测社区,并考虑重叠和非重叠设置。最后,在实际数据集上进行了大量的实验,并与之前的两种方法进行了比较,证明了我们提出的方法的有效性和潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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