Oversmoothing as Representation Degeneracy in Neural Sheaf Diffusion
Arif D\"onmez, Axel Mosig, Ellen Fritsche, Katharina Koch

TL;DR
This paper introduces a quiver-theoretic framework for Neural Sheaf Diffusion, interpreting oversmoothing as a degeneration of learned sheaf representations, and proposes regularizers inspired by geometric invariant theory.
Contribution
It develops an algebraic and geometric interpretation of sheaf diffusion, connecting oversmoothing to representation degeneration and introducing stability-based regularizers.
Findings
Oversmoothing corresponds to low-complexity representation collapse.
Adaptive stability regularizers can improve model performance.
Breaking stalk symmetry reduces variance and enhances stability.
Abstract
Neural Sheaf Diffusion (NSD) generalizes diffusion-based Graph Neural Networks by replacing scalar graph Laplacians with sheaf Laplacians whose learned restriction maps define a task-adapted geometry. While the diffusion limit of NSD is known to be the space of global sections, the representation-theoretic structure of this harmonic space remains largely implicit. We develop a quiver-theoretic interpretation of NSD by identifying cellular sheaves on graphs with representations of the associated incidence quiver. Under this correspondence, learned sheaf geometries become points in a finite-dimensional representation space. We show that direct-sum decompositions of the underlying incidence-quiver representation induce decompositions of the harmonic space reached in the diffusion limit. This gives an algebraic interpretation of oversmoothing as representation degeneration: learned sheaves…
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