One of the most important problems in complex network’s theory is the location of the entities that are essential or have a main role within the network. For this purpose, the use of dissimilarity measures (specific to theory of classification and data mining) to enrich the centrality measures in complex networks is proposed. The centrality method used is the eigencentrality which is based on the heuristic that the centrality of a node depends on how central are the nodes in the immediate neighbourhood (like rich get richer phenomenon). This can be described by an eigenvalues problem, however the information of the neighbourhood and the connections between neighbours is not taken in account, neglecting their relevance when is one evaluates the centrality/importance/influence of a node. The contribution calculated by the dissimilarity measure is parameter independent, making the proposed method is also parameter independent. Finally, we perform a comparative study of our method versus other methods reported in the literature, obtaining more accurate and less expensive computational results in most cases.
Eigencentrality based on dissimilarity measures reveals central nodes in complex networks
Alvarez-Socorro A J,G. C. Herrera-Almarza,L. González-Díaz
Published 2015 in Scientific Reports
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- Publication year
2015
- Venue
Scientific Reports
- Publication date
2015-11-25
- Fields of study
Mathematics, Computer Science, Medicine
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- Source metadata
Semantic Scholar, PubMed
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