A convex-relaxation denoiser projects PCA-reduced noisy manifold data onto the convex hull using a Gaussian-tail oracle, with finite-sample error bounds under a lower-mass condition on the latent distribution.
Note on refined dudley integral covering number bound.Unpublished
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Denoising data using convex relaxations
A convex-relaxation denoiser projects PCA-reduced noisy manifold data onto the convex hull using a Gaussian-tail oracle, with finite-sample error bounds under a lower-mass condition on the latent distribution.