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arxiv: 2006.07642 · v3 · pith:TGV53TEPnew · submitted 2020-06-13 · 📊 stat.ML · cs.LG· math.ST· stat.TH

Sample complexity and effective dimension for regression on manifolds

classification 📊 stat.ML cs.LGmath.STstat.TH
keywords manifolddimensionregressioncomplexityeffectivekernelmethodsable
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We consider the theory of regression on a manifold using reproducing kernel Hilbert space methods. Manifold models arise in a wide variety of modern machine learning problems, and our goal is to help understand the effectiveness of various implicit and explicit dimensionality-reduction methods that exploit manifold structure. Our first key contribution is to establish a novel nonasymptotic version of the Weyl law from differential geometry. From this we are able to show that certain spaces of smooth functions on a manifold are effectively finite-dimensional, with a complexity that scales according to the manifold dimension rather than any ambient data dimension. Finally, we show that given (potentially noisy) function values taken uniformly at random over a manifold, a kernel regression estimator (derived from the spectral decomposition of the manifold) yields minimax-optimal error bounds that are controlled by the effective dimension.

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