Differentiable Optimization of Similarity Scores Between Models and Brains
Nathan Cloos, Moufan Li, Markus Siegel, Scott L. Brincat, Earl K., Miller, Guangyu Robert Yang, Christopher J. Cueva

TL;DR
This paper introduces a differentiable framework for optimizing similarity scores between models and neural data, revealing limitations in current measures and emphasizing the need for careful interpretation.
Contribution
It presents a novel differentiable approach to optimize and analyze similarity measures, uncovering their biases and limitations in capturing neural-relevant information.
Findings
High similarity scores do not guarantee neural-relevant encoding.
No universal threshold defines a good similarity score.
CKA emphasizes high variance principal components.
Abstract
How do we know if two systems - biological or artificial - process information in a similar way? Similarity measures such as linear regression, Centered Kernel Alignment (CKA), Normalized Bures Similarity (NBS), and angular Procrustes distance, are often used to quantify this similarity. However, it is currently unclear what drives high similarity scores and even what constitutes a "good" score. Here, we introduce a novel tool to investigate these questions by differentiating through similarity measures to directly maximize the score. Surprisingly, we find that high similarity scores do not guarantee encoding task-relevant information in a manner consistent with neural data; and this is particularly acute for CKA and even some variations of cross-validated and regularized linear regression. We find no consistent threshold for a good similarity score - it depends on both the measure and…
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Taxonomy
TopicsNeural Networks and Applications
MethodsProcrustes · Linear Regression
