在动态社交网络中寻找社区

Chayant Tantipathananandh, T. Berger-Wolf
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引用次数: 84

摘要

社区是在社会网络中观察到的自然结构,通常以“相对密集”的节点子集为特征。社交网络随着时间的推移而变化,底层社区结构也是如此。因此,为了真正揭示这种结构,我们必须考虑网络的时间方面。在此之前,我们使用社会成本模型表示了寻找动态社区的框架,并制定了相应的优化问题[33],假设每个时间步都给出了个体划分为群体的情况。我们还提出了针对该问题的启发式和近似算法,具有相同的假设[32]。然而,一般来说,动态的社会网络被表示为社会网络快照的一系列图表,我们将个人划分为群体的假设是不成立的。本文推广了社会成本模型,提出了一个从任意图序列中寻找社区结构的优化问题。我们提出了一个半确定规划公式和一个启发式舍入格式。我们使用合成数据集表明,该方法在合成数据集上非常准确,并将其结果呈现在真实的社交网络上。
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Finding Communities in Dynamic Social Networks
Communities are natural structures observed in social networks and are usually characterized as "relatively dense" subsets of nodes. Social networks change over time and so do the underlying community structures. Thus, to truly uncover this structure we must take the temporal aspect of networks into consideration. Previously, we have represented framework for finding dynamic communities using the social cost model and formulated the corresponding optimization problem [33], assuming that partitions of individuals into groups are given in each time step. We have also presented heuristics and approximation algorithms for the problem, with the same assumption [32]. In general, however, dynamic social networks are represented as a sequence of graphs of snapshots of the social network and the assumption that we have partitions of individuals into groups does not hold. In this paper, we extend the social cost model and formulate an optimization problem of finding community structure from the sequence of arbitrary graphs. We propose a semi definite programming formulation and a heuristic rounding scheme. We show, using synthetic data sets, that this method is quite accurate on synthetic data sets and present its results on a real social network.
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