Attributed Network Alignment: Statistical Limits and Efficient Algorithm

arXiv stat.ML / 4/7/2026

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Key Points

  • The paper studies how to recover a hidden vertex correspondence between two correlated graphs when both edge weights and node features are available.
  • It introduces the “featured correlated Gaussian Wigner model,” coupling two graphs via an unknown permutation and correlating node features under the same permutation.
  • The authors derive information-theoretic thresholds for both exact and partial recovery of the latent mapping.
  • They present QPAlign, a quadratic-programming-relaxation algorithm, and show strong empirical results on synthetic and real datasets.
  • The paper also provides theoretical guarantees for QPAlign, including reliability and convergence assurances.

Abstract

This paper studies the problem of recovering a hidden vertex correspondence between two correlated graphs when both edge weights and node features are observed. While most existing work on graph alignment relies primarily on edge information, many real-world applications provide informative node features in addition to graph topology. To capture this setting, we introduce the featured correlated Gaussian Wigner model, where two graphs are coupled through an unknown vertex permutation, and the node features are correlated under the same permutation. We characterize the optimal information-theoretic thresholds for exact recovery and partial recovery of the latent mapping. On the algorithmic side, we propose QPAlign, an algorithm based on a quadratic programming relaxation, and demonstrate its strong empirical performance on both synthetic and real datasets. Moreover, we also derive theoretical guarantees for the proposed procedure, supporting its reliability and providing convergence guarantees.