English

Equilibrium-preserving Laplacian renormalization group

Statistical Mechanics 2025-07-08 v1 Physics and Society

Abstract

Diffusion over networks has recently been used to define spatiotemporal scales and extend Kadanoff block spins of Euclidean space to supernodes of networks in the Laplacian renormalization group (LRG). Yet, its ad hoc coarse-graining procedure remains underdeveloped and unvalidated, limiting its broader applicability. Here we rigorously formulate an LRG preserving the equilibrium state, offering a principled coarse-graining procedure. We construct the renormalized Laplacian matrix preserving dominant spectral properties using a proper, quasi-complete basis transformation and the renormalized adjacency matrix preserving mean connectivity from equilibrium-state flows among supernodes. Applying recursively this equilibrium-preserving LRG to various hypergraphs, we find that in hypertrees with low spectral dimensions vertex degree and hyperedge cardinality distributions flow toward Poissonian forms, while in hypergraphs lacking a finite spectral dimension they broaden toward power-law forms when starting from Poissonian ones, revealing how informational, structural, and dynamical scale-invariances are interrelated.

Keywords

Cite

@article{arxiv.2507.04977,
  title  = {Equilibrium-preserving Laplacian renormalization group},
  author = {Sudo Yi and Seong-Gyu Yang and K. -I. Goh and D. -S. Lee},
  journal= {arXiv preprint arXiv:2507.04977},
  year   = {2025}
}

Comments

6 pages and 3 figures in main text, 16 pages and 12 figures in supplemental material

R2 v1 2026-07-01T03:49:27.341Z