DRESS: A Continuous Framework for Structural Graph Refinement
Abstract
We introduce DRESS, a deterministic, parameter-free framework that iteratively refines the structural similarity of edges in a graph to produce a canonical fingerprint: a real-valued edge vector, obtained by converging a non-linear dynamical system to its unique fixed point. The fingerprint is isomorphism-invariant by construction, numerically stable (strictly bounded, precision-preserving, and mathematically well-posed), fast and embarrassingly parallel to compute: DRESS total runtime is for iterations to convergence, and convergence is guaranteed by Birkhoff contraction. We generalize the original equation to Motif-DRESS (arbitrary structural motifs) and Generalized-DRESS (abstract aggregation template), and introduce -DRESS, which runs DRESS on each vertex-deleted subgraph to boost expressiveness. -DRESS empirically separates all 7,983 graphs in a comprehensive Strongly Regular Graph benchmark, and on the tested CFI instances (), -deletion (-DRESS) empirically matches the -WL boundary.
Keywords
Cite
@article{arxiv.2602.20833,
title = {DRESS: A Continuous Framework for Structural Graph Refinement},
author = {Eduar Castrillo Velilla},
journal= {arXiv preprint arXiv:2602.20833},
year = {2026}
}