Natural Image Classification via Quasi-Cyclic Graph Ensembles and Random-Bond Ising Models at the Nishimori Temperature
V.S. Usatyuk, D.A. Sapozhnikov, S.I. Egorov

TL;DR
This paper introduces a physics-inspired spectral graph approach for image classification that compresses features, suppresses harmful structures, and improves accuracy and efficiency on ImageNet datasets.
Contribution
It establishes a rigorous link between graph trapping sets and topological defects, introduces an efficient Nishimori-temperature estimator, and demonstrates topology-guided graph embedding for compressed classifiers.
Findings
Achieved 98.7% top-1 accuracy on ImageNet-10
Compressed MobileNetV2 features from 1280 to 32 dimensions
Reduced FLOPs by a factor of 2.67 compared to MobileNetV2
Abstract
Modern multi-class image classification uses high-dimensional CNN features that incur large memory and computational costs and obscure the data manifold's geometry. Existing graph-based spectral classifiers work on synthetic or binary tasks but degrade on natural images with many classes because feature manifolds have non-trivial topology. We introduce a physics-inspired pipeline where frozen MobileNetV2 features are interpreted as Ising spins on a sparse multi-edge type quasi-cyclic LDPC graph, defining a Random-Bond Ising Model (RBIM). The model is operated at its Nishimori temperature -- where the smallest eigenvalue of the Bethe-Hessian matrix vanishes. A spectral-topological correspondence links trapping sets in the Tanner graph to topological invariants via poles of the Ihara-Bass zeta function, enabling systematic suppression of harmful substructures that otherwise reduce top-1…
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