Network Renormalization
Andrea Gabrielli, Diego Garlaschelli, Subodh P. Patil, and M. \'Angeles Serrano

TL;DR
This paper reviews the development and challenges of extending the renormalization group framework from traditional physical systems to complex networks, highlighting recent advances and open problems.
Contribution
It provides a comprehensive overview of the main approaches, progress, and unresolved issues in network renormalization research.
Findings
Reviewed various methods of network renormalization
Identified key advances in the field
Highlighted open challenges and future directions
Abstract
The renormalization group (RG) is a powerful theoretical framework developed to consistently transform the description of configurations of systems with many degrees of freedom, along with the associated model parameters and coupling constants, across different levels of resolution. It also provides a way to identify critical points of phase transitions and study the system's behaviour around them by distinguishing between relevant and irrelevant details, the latter being unnecessary to describe the emergent macroscopic properties. In traditional physical applications, the RG largely builds on the notions of homogeneity, symmetry, geometry and locality to define metric distances, scale transformations and self-similar coarse-graining schemes. More recently, various approaches have tried to extend RG concepts to the ubiquitous realm of complex networks where explicit geometric…
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