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Modified partition integration method for community detection in multidimensional social networks

机译:多维社交网络中用于社区检测的改进分区集成方法

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A social network may be viewed as a network of interactions or relationships amongst nodes that group together to form communities. In the real world, social networks involve multiple types of interactions that may evolve over time and, therefore, are inherently multidimensional. Extracting a community structure that best represents different dimensions in a multidimensional social network is a challenging problem. Tang et al. (2012) proposed a partition integration method for detection of communities in a d-dimension social network. It starts by determining hard clustering of the individual dimensions using the k-means algorithm, followed by application of cluster ensemble to obtain final clustering. However, the k-means algorithm is not suitable here because of its high sensitivity to the initial condition that is likely to yield results with relatively high variance. In this paper, we propose a variant of Tang's method, using state-of-the-art unidimensional community detection algorithms, both evolutionary and non-evolutionary, instead of k-means, for hard clustering. We measure the quality of the final partitioning by calculating the average overlap between the final and dimension-wise partitions. The proposed algorithm successfully detects the community structure for real as well as synthetic multidimensional networks, outperforming the state-of-the-art algorithms. The proposed method works well for both dynamic and static multidimensional networks and a priori knowledge of the number of communities is not required. It works well for both weighted and unweighted undirected networks, is easily extendable for directed networks, and does not require any additional decoding of the result.
机译:社交网络可以被看作是节点之间的交互或关系的网络,这些节点或节点组合在一起以形成社区。在现实世界中,社交网络涉及多种类型的互动,这些互动可能随着时间的流逝而发展,因此本质上是多维的。提取最能代表多维社交网络中不同维度的社区结构是一个具有挑战性的问题。 Tang等。 (2012年)提出了一种用于D维社交网络中社区检测的分区集成方法。首先使用k-means算法确定各个维度的硬聚类,然后应用聚类集成以获得最终聚类。但是,k-means算法在这里不适用,因为它对初始条件具有很高的敏感性,可能会产生相对较高方差的结果。在本文中,我们提出了Tang方法的一种变体,它使用最先进的一维社区检测算法,包括进化算法和非进化算法,而不是k均值算法,用于硬聚类。我们通过计算最终分区和维度分区之间的平均重叠来衡量最终分区的质量。所提出的算法成功地检测了真实的和合成的多维网络的社区结构,其性能优于最新的算法。所提出的方法对于动态和静态多维网络都适用,并且不需要先验社区数量的知识。它适用于加权和非加权无向网络,可以很容易地扩展到有向网络,并且不需要对结果进行任何其他解码。

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