AI RESEARCH
Bilinear autoencoders find interpretable manifolds
arXiv CS.LG
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ArXi:2605.08891v1 Announce Type: new Sparse autoencoders have become a standard tool for uncovering interpretable latent representations in neural networks. Yet salient concepts often span manifolds that current linear methods cannot capture without post hoc analysis. This paper uses quadratic latents to close this gap: we implement these with bilinear autoencoders, which decompose activations into low-rank quadratic forms, compose linearly in weight space, and admit input-independent geometric analysis.