Correlation between centrality metrics and their application to the opinion model
Cong Li, Qian Li, Piet Van Mieghem, H. Eugene Stanley, Huijuan Wang

TL;DR
This paper examines correlations among centrality metrics in networks, introduces the degree mass measure, and explores how selecting influential nodes based on these metrics impacts opinion dynamics.
Contribution
It introduces the degree mass centrality, analyzes correlations among metrics, and evaluates their effectiveness in opinion competition models.
Findings
Degree, B_{n}, and 1st/2nd-order degree mass are strongly correlated.
The 2nd-order degree mass has a higher correlation with x_{1} than lower orders.
Selecting influential nodes by leverage, B_{n}, or degree enhances opinion competition.
Abstract
In recent decades, a number of centrality metrics describing network properties of nodes have been proposed to rank the importance of nodes. In order to understand the correlations between centrality metrics and to approximate a high-complexity centrality metric by a strongly correlated low-complexity metric, we first study the correlation between centrality metrics in terms of their Pearson correlation coefficient and their similarity in ranking of nodes. In addition to considering the widely used centrality metrics, we introduce a new centrality measure, the degree mass. The m order degree mass of a node is the sum of the weighted degree of the node and its neighbors no further than m hops away. We find that the B_{n}, the closeness, and the components of x_{1} are strongly correlated with the degree, the 1st-order degree mass and the 2nd-order degree mass, respectively, in both…
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