Robust classification of salient links in complex networks
Complex networks in natural, social and technological systems generically exhibit an abundance of rich information. Extracting meaningful structural features from data is one of the most challenging tasks in network theory. Many methods and concepts have been proposed to address this problem such as...
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Veröffentlicht in: | Nature communications 2012-05, Vol.3 (1), p.864-864, Article 864 |
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Sprache: | eng |
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Zusammenfassung: | Complex networks in natural, social and technological systems generically exhibit an abundance of rich information. Extracting meaningful structural features from data is one of the most challenging tasks in network theory. Many methods and concepts have been proposed to address this problem such as centrality statistics, motifs, community clusters and backbones, but such schemes typically rely on external and arbitrary parameters. It is unknown whether generic networks permit the classification of elements without external intervention. Here we show that link salience is a robust approach to classifying network elements based on a consensus estimate of all nodes. A wide range of empirical networks exhibit a natural, network-implicit classification of links into qualitatively distinct groups, and the salient skeletons have generic statistical properties. Salience also predicts essential features of contagion phenomena on networks, and points towards a better understanding of universal features in empirical networks that are masked by their complexity.
Methods to study the structure of complex networks often rely on case-sensitive parameters that have limited applications. In this study, a new method—link salience—is used to classify network elements based on a consensus estimate of all nodes, finding generic topological features in many empirical networks. |
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ISSN: | 2041-1723 2041-1723 |
DOI: | 10.1038/ncomms1847 |