The Physics of Communicability in Complex Networks
Ernesto Estrada (U. Strathclyde), Naomichi Hatano (U. Tokyo) and, Michele Benzi (Emory U.)

TL;DR
This paper reviews various measures of communicability in complex networks, emphasizing the importance of all possible routes for information flow, and explores their applications and computational aspects in analyzing real-world systems.
Contribution
It introduces a comprehensive review of communicability functions based on matrix functions, highlighting their physical interpretations and computational efficiency for large networks.
Findings
Communicability considers all routes, not just shortest paths.
Matrix functions like exponential and resolvent are used to define communicability.
Applications span biological, physical, and social networks.
Abstract
A fundamental problem in the study of complex networks is to provide quantitative measures of correlation and information flow between different parts of a system. To this end, several notions of communicability have been introduced and applied to a wide variety of real-world networks in recent years. Several such communicability functions are reviewed in this paper. It is emphasized that communication and correlation in networks can take place through many more routes than the shortest paths, a fact that may not have been sufficiently appreciated in previously proposed correlation measures. In contrast to these, the communicability measures reviewed in this paper are defined by taking into account all possible routes between two nodes, assigning smaller weights to longer ones. This point of view naturally leads to the definition of communicability in terms of matrix functions, such as…
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