AI RESEARCH
Representational Alignment Across Model Layers and Brain Regions with Multi-Level Optimal Transport
arXiv CS.LG
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ArXi:2510.01706v2 Announce Type: replace Standard representational similarity methods align each layer of a network to its best match in another independently, producing asymmetric results, lacking a global alignment score, and struggling with networks of different depths. These limitations arise from ignoring global activation structure and restricting mappings to rigid one-to-one layer correspondences. We propose Multi-Level Optimal Transport (MOT), a unified framework that jointly infers soft, globally consistent layer-to-layer couplings and neuron-level transport plans.