Density estimation on an unknown submanifold

We investigate density estimation from a -sample in the Euclidean space , when the data is supported by an unknown submanifold of possibly unknown dimension under a reach condition. We study nonparametric kernel methods for pointwise loss, with data-driven bandwidths that incorporate some learning of the geometry via a local dimension estimator. When has H\"older smoothness and has regularity , our estimator achieves the rate and does not depend on the ambient dimension and is asymptotically minimax for . Following Lepski's principle, a bandwidth selection rule is shown to achieve smoothness adaptation. We also investigate the case : by estimating in some sense the underlying geometry of , we establish in dimension that the minimax rate is proving in particular that it does not depend on the regularity of . Finally, a numerical implementation is conducted on some case studies in order to confirm the practical feasibility of our estimators.
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