Beyond Activation Alignment: The Geometry of Neural Sensitivity
Amirhossein Yavari, Farnaz Zamani Esfahlani

TL;DR
This paper introduces a new framework based on local Fisher information to analyze neural representations' sensitivity to small perturbations, complementing existing global alignment methods.
Contribution
It develops a local geometric approach using Fisher information to assess neural representation discriminability, providing a complete dataset-level summary and new metrics.
Findings
Recovered corresponding layers across trained neural networks
Supported transferable class-conditional probes
Revealed stimulus-coordinate effects in mouse visual cortex
Abstract
Activation-alignment measures such as Representational Similarity Analysis (RSA), Canonical Correlation Analysis (CCA), and Centered Kernel Alignment (CKA) are widely used to compare biological and artificial neural representations. Recent theoretical work interprets many of these methods as assessing agreement between optimal linear readouts over broad families of global tasks. However, agreement at the level of global readouts does not determine how a system uses local stimulus evidence. Specifically, representations may align in activation space yet differ in their sensitivity to small perturbations. To address this challenge, we introduce a complementary framework based on local decodable information, which focuses on a representation's ability, under noise, to discriminate small perturbations within a specified stimulus-coordinate subspace. Building on Fisher information and local…
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