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Multi-objective clustering technique based on k-nodes update policy and similarity matrix for mining communities in social networks

机译:基于K-Nodes更新策略和相似性矩阵的多目标聚类技术在社交网络中挖掘社区

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This paper proposes a relatively all-purpose network clustering technique based on the framework of multi-objective evolutionary algorithms, which can effectively dispose the issue of community detection in unsigned social networks, as well as in signed social networks. Firstly, we formulate a generalized similarity function to construct a similarity matrix, and then a pre-partitioning strategy is projected according to the similarity matrix. The pre-partitioning strategy merely considers nodes with high similarity values, which avoids the interference of noise nodes during the label update phase. In this way, at the initial phase of the algorithm, nodes with strong connections are fleetly gathered into sub communities. Secondly, we elaborately devise a crossover operator, called cross-merging operator, to merge sub-communities generated by the pre-partitioning technique. Moreover, a special mutation operator, based on the similarity matrix of nodes, is implemented to adjust boundary nodes connecting different communities. Finally, to handle different types of networks, we, therefore, have presented the novel multi-objective optimization models for this issue. Through a bulk of rigorous experiments on both unsigned and signed social networks, the preeminent clustering performance illustrate that the proposed algorithm is capable of mining communities effectively. (C) 2017 Elsevier B.V. All rights reserved.
机译:本文提出了一种基于多目标进化算法框架的相对出的网络聚类技术,可以有效地处理未签名社交网络的社区检测问题,以及签署的社交网络。首先,我们制定了构造相似性矩阵的广义相似性功能,然后根据相似性矩阵投射预分区策略。预分区策略仅考虑具有高相似性值的节点,这避免了在标签更新阶段期间噪声节点的干扰。以这种方式,在算法的初始阶段,具有强连接的节点被迅速地聚集到子社区中。其次,我们精致地设计了一个被称为交叉合并运算符的交叉运算符,以合并由预分区技术生成的子群群。此外,实现了基于节点的相似性矩阵的特殊突变运算符,以调整连接不同社区的边界节点。最后,为了处理不同类型的网络,我们为此问题提出了新的多目标优化模型。通过对无符号和签名的社交网络的大部分严格的实验,卓越的聚类性能说明了所提出的算法能够有效地挖掘群落。 (c)2017年Elsevier B.V.保留所有权利。

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