AI RESEARCH
Bi-Lipschitz Autoencoder With Injectivity Guarantee
arXiv CS.LG
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ArXi:2604.06701v1 Announce Type: new Autoencoders are widely used for dimensionality reduction, based on the assumption that high-dimensional data lies on low-dimensional manifolds. Regularized autoencoders aim to preserve manifold geometry during dimensionality reduction, but existing approaches often suffer from non-injective mappings and overly rigid constraints that limit their effectiveness and robustness. In this work, we identify encoder non-injectivity as a core bottleneck that leads to poor convergence and distorted latent representations.