TL;DR
This paper introduces geometric stability as a new measure of how reliably neural representations preserve their structure under perturbations, revealing insights beyond traditional similarity metrics.
Contribution
It presents the Shesha metric for quantifying stability, distinguishes it from similarity measures, and demonstrates its utility across diverse models and domains.
Findings
Stability and similarity are empirically uncorrelated across models.
Stability exposes a 'geometric tax' where top models rank low in stability.
Contrastive alignment and hierarchy predict stability, guiding model selection.
Abstract
Representational similarity analysis and related methods have become standard tools for comparing the internal geometries of neural networks and biological systems. These methods measure what is represented, the alignment between two representational spaces, but not whether that structure is robust. We introduce geometric stability, a distinct dimension of representational quality that quantifies how reliably a representation's pairwise distance structure holds under perturbation. Our metric, Shesha, measures self-consistency through split-half correlation of representational dissimilarity matrices constructed from complementary feature subsets. A key formal property distinguishes stability from similarity: Shesha is not invariant to orthogonal transformations of the feature space, unlike CKA and Procrustes, enabling it to detect compression-induced damage to manifold structure that…
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