AI RESEARCH

Platonic Representations in the Human Brain: Unsupervised Recovery of Universal Geometry

arXiv CS.CV

ArXi:2605.20496v1 Announce Type: cross The Strong Platonic Representation Hypothesis suggests that representational convergence in artificial neural networks can be harnessed constructively: embeddings can be translated across models through a universal latent space without paired data. We ask whether an analogous geometry can be recovered across human brains. Using fMRI data from the Natural Scenes Dataset, we propose a self-supervised encoder that learns subject-specific embeddings from brain data alone by exploiting repeated stimulus presentations.