Random Sequential Renormalization and Agglomerative Percolation in Networks: Application to Erd"os-R'enyi and Scale-free Graphs
Golnoosh Bizhani, Peter Grassberger, Maya Paczuski

TL;DR
This paper investigates the statistical behavior of random sequential renormalization in various network models, revealing a second order phase transition akin to percolation, with implications for understanding network structure and critical phenomena.
Contribution
It introduces a detailed analysis of RSR in different networks, uncovering a new agglomerative percolation transition and its dependence on network type and size.
Findings
All networks exhibit a second order transition in RG flow.
The transition is associated with the emergence of a giant hub.
Critical exponents depend on network type, not average degree.
Abstract
We study the statistical behavior under random sequential renormalization(RSR) of several network models including Erd"os R'enyi (ER) graphs, scale-free networks and an annealed model (AM) related to ER graphs. In RSR the network is locally coarse grained by choosing at each renormalization step a node at random and joining it to all its neighbors. Compared to previous (quasi-)parallel renormalization methods [C.Song et.al], RSR allows a more fine-grained analysis of the renormalization group (RG) flow, and unravels new features, that were not discussed in the previous analyses. In particular we find that all networks exhibit a second order transition in their RG flow. This phase transition is associated with the emergence of a giant hub and can be viewed as a new variant of percolation, called agglomerative percolation. We claim that this transition exists also in previous graph…
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