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首页> 外文期刊>Wiley interdisciplinary reviews. Computational statistics >Community detection in large-scale networks: a survey and empirical evaluation
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Community detection in large-scale networks: a survey and empirical evaluation

机译:大型网络中的社区检测:一项调查和经验评估

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摘要

Community detection is a common problem in graph data analytics that consists of finding groups of densely connected nodes with few connections to nodes outside of the group. In particular, identifying communities in large-scale networks is an important task in many scientific domains. In this review, we evaluated eight state-of-the-art and five traditional algorithms for overlapping and disjoint community detection on large-scale real-world networkswith known ground-truth communities. These 13 algorithms were empirically compared using goodness metrics that measure the structural properties of the identified communities, as well as performance metrics that evaluate these communities against the ground-truth. Our results show that these two types of metrics are not equivalent. That is, an algorithm may perform well in terms of goodness metrics, but poorly in terms of performance metrics, or vice versa.
机译:社区检测是图形数据分析中的一个常见问题,该问题包括查找密集连接的节点组,而与该组外部节点的连接很少。特别地,在许多科学领域中,在大型网络中识别社区是一项重要任务。在这篇综述中,我们评估了八种最新技术和五种传统算法,用于在具有已知地面真相社区的大规模现实网络上进行重叠和不相交的社区检测。使用衡量所识别社区的结构特性的善良度指标以及根据实际情况评估这些社区的性能指标,对这13种算法进行了经验比较。我们的结果表明,这两种类型的指标并不相同。也就是说,就善良度指标而言,算法可能表现良好,而就绩效指标而言,则表现较差,反之亦然。

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