AI RESEARCH
Feature Identification via the Empirical NTK
arXiv CS.AI
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ArXi:2510.00468v4 Announce Type: replace-cross We provide evidence that eigenanalysis of the empirical neural tangent kernel (eNTK) can surface feature directions in trained neural networks. Across three increasingly realistic settings -- a 1-layer MLP trained on modular addition, a 1-layer Transformer trained on modular addition and the pretrained language model Gemma-3-270M -- we show that top eigenspaces of the eNTK align with ground-truth or interpretable features.