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[Kurzfassung]
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Established in 2005, YouTube is one of the fastest-growing websites, and has become one of the most accessed sites in the
Internet. It has a significant impact on the Internet traffic distribution, but itself is suffering from severe scalabilityconstraints. Understanding the features of YouTube and similar video sharing sites is thus crucial to network traffic engineeringand to sustainable development of this new generation of services.
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[Kurzfassung]
[BibTeX]
A Family of new measures of point and graph centrality based on early intuitions of Bavelas (1948) is introduced. These measures define centrality in terms of the degree to which a point falls on the shortest path between others and therefore has a potential for control of communication. They may be used to index centrality in any large or small network of symmetrical relations, whether connected or unconnected.