Abstract
We investigate the estimation of a density f from a n-sample on an Euclidean space , when the data are supported by an unknown submanifold M of possibly unknown dimension , under a reach condition. We investigate several nonparametric kernel methods, with data-driven bandwidths that incorporate some learning of the geometry via a local dimension estimator. When f has Hölder smoothness β and M has regularity α, our estimator achieves the rate for a pointwise loss. The rate does not depend on the ambient dimension D and we establish that our procedure 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 M, we establish in dimension that the minimax rate is proving in particular that it does not depend on the regularity of M. Finally, a numerical implementation is conducted on some case studies in order to confirm the practical feasibility of our estimators.
Acknowledgments
We are grateful to Krishnan (Ravi) Shankar and Hippolyte Verdier for insightful discussions and comments. The valuable input of two referees is greatly acknowledged
Citation
Clément Berenfeld. Marc Hoffmann. "Density estimation on an unknown submanifold." Electron. J. Statist. 15 (1) 2179 - 2223, 2021. https://doi.org/10.1214/21-EJS1826
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