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Exorcising the Demon: Angel, Efficient Node-Centric Community Discovery

机译:促进恶魔:天使,高效的节点中心社区发现

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Community discovery is one of the most challenging tasks in social network analysis. During the last decades, several algorithms have been proposed with the aim of identifying communities in complex networks, each one searching for mesoscale topologies having different and peculiar characteristics. Among such vast literature, an interesting family of Community Discovery algorithms, designed for the analysis of social network data, is represented by overlapping, node-centric approaches. In this work, following such line of research, we propose Angel, an algorithm that aims to lower the computational complexity of previous solutions while ensuring the identification of high-quality overlapping partitions. We compare Angel, both on synthetic and real-world datasets, against state of the art community discovery algorithms designed for the same community definition. Our experiments underline the effectiveness and efficiency of the proposed methodology, confirmed by its ability to constantly outperform the identified competitors.
机译:社区发现是社会网络分析中最具挑战性的任务之一。在过去几十年中,已经提出了几种算法,目的是识别复杂网络中的社区,每个算法搜索具有不同和特殊特征的Mesoscale拓扑。在这种广泛的文学中,专为分析社交网络数据而设计的一个有趣的社区发现算法,由重叠,以中心为中心的方法来表示。在这项工作中,在这样的研​​究中,我们提出了一个旨在降低先前解决方案的计算复杂性的算法,同时确保识别高质量的重叠分区。我们比较天使,在综合和现实世界数据集上,针对为同一社区定义设计的艺术社区发现算法。我们的实验强调了所提出的方法的有效性和效率,通过其经常优于所确定的竞争对手的能力证实。

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