局部优势揭示网络中的集群

IF 5.4 1区 物理与天体物理 Q1 PHYSICS, MULTIDISCIPLINARY Communications Physics Pub Date : 2024-05-31 DOI:10.1038/s42005-024-01635-4
Dingyi Shi, Fan Shang, Bingsheng Chen, Paul Expert, Linyuan Lü, H. Eugene Stanley, Renaud Lambiotte, Tim S. Evans, Ruiqi Li
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引用次数: 0

摘要

聚类或群落可以在多个尺度上对复杂系统进行粗粒度描述,但在实践中,对它们的检测仍然具有挑战性。群落检测方法通常通过切割、传导或模块化等概念,将群落定义为密集子图或中间连接很少的子图。在此,我们将从另一个角度考虑建立在局部优势概念基础上的方法,即低度节点被分配到高度节点的影响盆地中,并设计出一种基于局部信息的高效算法。局部优势产生了社区中心,并揭示了网络中的局部层次。社区中心的度数大于其邻居,并与其他中心保持足够的距离。我们的框架在具有真实社区标签的合成网络和经验网络中得到了验证。局部优势的概念和节点间的相关非对称关系并不局限于社群检测,也可用于聚类问题,我们将在矢量数据网络中加以说明。社群检测的研究已经有 20 多年的历史了,但从社群中心的角度来看,这种方法还很欠缺,而且大多数算法都需要全局信息。作者提出了一种基于局部信息的线性算法来识别中心和相关的分层结构,从而实现有效的群落检测,这也能增强矢量数据的聚类效果。
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Local dominance unveils clusters in networks
Clusters or communities can provide a coarse-grained description of complex systems at multiple scales, but their detection remains challenging in practice. Community detection methods often define communities as dense subgraphs, or subgraphs with few connections in-between, via concepts such as the cut, conductance, or modularity. Here we consider another perspective built on the notion of local dominance, where low-degree nodes are assigned to the basin of influence of high-degree nodes, and design an efficient algorithm based on local information. Local dominance gives rises to community centers, and uncovers local hierarchies in the network. Community centers have a larger degree than their neighbors and are sufficiently distant from other centers. The strength of our framework is demonstrated on synthesized and empirical networks with ground-truth community labels. The notion of local dominance and the associated asymmetric relations between nodes are not restricted to community detection, and can be utilised in clustering problems, as we illustrate on networks derived from vector data. Community detection has been studied for more than 20 years, but a perspective from community center is still missing and most algorithms need global information. The authors propose a linear algorithm based on local information to identify centers and related hierarchical structure for effective community detection, which can enhance clustering vector data as well.
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来源期刊
Communications Physics
Communications Physics Physics and Astronomy-General Physics and Astronomy
CiteScore
8.40
自引率
3.60%
发文量
276
审稿时长
13 weeks
期刊介绍: Communications Physics is an open access journal from Nature Research publishing high-quality research, reviews and commentary in all areas of the physical sciences. Research papers published by the journal represent significant advances bringing new insight to a specialized area of research in physics. We also aim to provide a community forum for issues of importance to all physicists, regardless of sub-discipline. The scope of the journal covers all areas of experimental, applied, fundamental, and interdisciplinary physical sciences. Primary research published in Communications Physics includes novel experimental results, new techniques or computational methods that may influence the work of others in the sub-discipline. We also consider submissions from adjacent research fields where the central advance of the study is of interest to physicists, for example material sciences, physical chemistry and technologies.
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