MCS+: An Efficient Algorithm for Crawling the Community Structure in Multiplex Networks

Ricky Laishram, Jeremy D. Wendt, S. Soundarajan
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Abstract

In this article, we consider the problem of crawling a multiplex network to identify the community structure of a layer-of-interest. A multiplex network is one where there are multiple types of relationships between the nodes. In many multiplex networks, some layers might be easier to explore (in terms of time, money etc.). We propose MCS+, an algorithm that can use the information from the easier to explore layers to help in the exploration of a layer-of-interest that is expensive to explore. We consider the goal of exploration to be generating a sample that is representative of the communities in the complete layer-of-interest. This work has practical applications in areas such as exploration of dark (e.g., criminal) networks, online social networks, biological networks, and so on. For example, in a terrorist network, relationships such as phone records, e-mail records, and so on are easier to collect; in contrast, data on the face-to-face communications are much harder to collect, but also potentially more valuable. We perform extensive experimental evaluations on real-world networks, and we observe that MCS+ consistently outperforms the best baseline—the similarity of the sample that MCS+ generates to the real network is up to three times that of the best baseline in some networks. We also perform theoretical and experimental evaluations on the scalability of MCS+ to network properties, and find that it scales well with the budget, number of layers in the multiplex network, and the average degree in the original network.
MCS+:一种高效的多路网络社区结构爬行算法
在本文中,我们考虑了爬行多路网络以识别兴趣层的社区结构的问题。多路网络是节点之间存在多种类型关系的网络。在许多多路网络中,某些层可能更容易探索(在时间、金钱等方面)。我们提出了MCS+算法,它可以使用来自更容易探索层的信息来帮助探索昂贵的感兴趣层。我们认为探索的目标是生成一个样本,在整个感兴趣的层中代表社区。这项工作在探索黑暗(如犯罪)网络、在线社交网络、生物网络等领域具有实际应用价值。例如,在恐怖分子网络中,诸如电话记录、电子邮件记录等关系更容易收集;相比之下,面对面交流的数据更难收集,但也可能更有价值。我们对现实世界的网络进行了广泛的实验评估,我们观察到MCS+始终优于最佳基线- MCS+生成的样本与真实网络的相似性在某些网络中高达最佳基线的三倍。我们还对MCS+对网络特性的可扩展性进行了理论和实验评估,发现它与预算、复用网络的层数和原始网络的平均度都有很好的扩展性。
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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