The Platonic Universe: Do Foundation Models See the Same Sky?
Kshitij Duraphe · Michael Smith · Shashwat Sourav · John Wu
Abstract
We test the Platonic Representation Hypothesis (PRH) in astronomy by measuring representational convergence across a range of foundation models trained on different data types. Using spectroscopic and imaging observations from JWST, HSC, Legacy Survey, and DESI, we compare representations from vision transformers, self-supervised models, and astronomy-specific architectures via mutual $k$-nearest neighbour analysis. We observe consistent scaling: representational alignment generally increases with model capacity across our tested architectures, supporting convergence toward a shared representation of galaxy astrophysics. Our results suggest that astronomical foundation models can rely on pre-trained general-purpose architectures rather than training domain-specific models from scratch, capitalising on the broader machine learning community's computational investment.
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