An entropy-based, scale-dependent centrality

L. R. Schwengber,S. D. Prado,S. R. Dahmen

arxiv(2021)

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摘要
In this article we introduce an entropy-based, scale-dependent centrality that is evaluated as the Shannon entropy of the distribution at time t of a continuous-time random walk. It ranks nodes as a function of the time t, which acts as a parameter and defines the scale of the network. It is able capture well-known centralities such as degree, eigenvector and closeness depending on the range of t. We compare it with the broad class of total $f$-communicability centralities, of which both Katz centrality and total communicability are particular cases.
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关键词
centrality,entropy-based,scale-dependent
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