Tuning degree distributions: Departing from scale-free networks |
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Authors: | C.C. Leary M. Schwehm H.P. Duerr |
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Affiliation: | a Department of Medical Biometry, University of Tübingen, Westbahnhofstraße 55, 72070 Tübingen, Germany b Department of Mathematics, State University of New York at Geneseo, 1 College Circle, Geneseo, NY 14454, USA |
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Abstract: | ![]() Scale-free networks are characterized by a degree distribution with power-law behavior. Although scale-free networks have been shown to arise in many areas, ranging from the World Wide Web to transportation or social networks, degree distributions of other observed networks often differ from the power-law type. Data based investigations require modifications of the typical scale-free network.We present an algorithm that generates networks in which the shape of the degree distribution is tunable by modifying the preferential attachment step of the Barabási-Albert construction algorithm. The shape of the distribution is represented by dispersion measures such as the variance and the skewness, both of which are highly correlated with the maximal degree of the network and, therefore, adequately represents the influence of superspreaders or hubs. By combining our algorithm with work of Holme and Kim, we show how to generate networks with a variety of degree distributions and clustering coefficients. |
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Keywords: | Scale-free networks Preferential attachment Degree distribution Clustering Superspreaders Simulation Skewness |
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