We investigate density estimation from a $n$-sample in the Euclidean space $\mathbb R^D$, when the data is supported by an unknown submanifold $M$ of possibly unknown dimension $d < D$ under a reach condition. We study nonparametric kernel methods for pointwise and integrated loss, with data-driven bandwidths that incorporate some learning of the geometry via a local dimension estimator. When $f$ has H\"older smoothness $\beta$ and $M$ has regularity $\alpha$ in a sense to be defined, our estimator achieves the rate $n^{-\alpha \wedge \beta/(2\alpha \wedge \beta+d)}$ and does not depend on the ambient dimension $D$ and is asymptotically minimax for $\alpha \geq \beta$. Following Lepski's principle, a bandwidth selection rule is shown to ach...
The reach of a submanifold is a crucial regularity parameter for manifold learning and geometric inf...
We study the Bayesian density estimation of data living in the offset of an unknown submanifold of t...
25 pagesInternational audienceThis paper deals with the classical problem of density estimation on t...
International audienceGiven an $n$-sample drawn on a submanifold $M \subset \mathbb{R}^D$, we derive...
International audienceWe focus on the problem of manifold estimation: given a set of observations sa...
We find the minimax rate of convergence in Hausdorff distance for estimating a manifold M of dimensi...
In high-dimensional statistics, the manifold hypothesis presumes that the data lie near low-dimensio...
We present a new method to estimate the intrinsic dimensionality of a submanifold M in Euclidean spa...
Many algorithms in machine learning and computational geometry require, as input, the intrinsic dime...
54 pages, 11 figuresInternational audienceMany algorithms in machine learning and computational geom...
Some datasets exhibit non-trivial geometric or topological features that can be interesting to infer...
This paper studies the estimation of the conditional density f (x, ·) of Y i given X i = x, from the...
We consider practical density estimation from large data sets sampled on manifolds embedded in Eucli...
We focus on the nonparametric density estimation problem with directional data. We propose a new rul...
Certains jeux de données présentent des caractéristiques géométriques et topologiques non triviales ...
The reach of a submanifold is a crucial regularity parameter for manifold learning and geometric inf...
We study the Bayesian density estimation of data living in the offset of an unknown submanifold of t...
25 pagesInternational audienceThis paper deals with the classical problem of density estimation on t...
International audienceGiven an $n$-sample drawn on a submanifold $M \subset \mathbb{R}^D$, we derive...
International audienceWe focus on the problem of manifold estimation: given a set of observations sa...
We find the minimax rate of convergence in Hausdorff distance for estimating a manifold M of dimensi...
In high-dimensional statistics, the manifold hypothesis presumes that the data lie near low-dimensio...
We present a new method to estimate the intrinsic dimensionality of a submanifold M in Euclidean spa...
Many algorithms in machine learning and computational geometry require, as input, the intrinsic dime...
54 pages, 11 figuresInternational audienceMany algorithms in machine learning and computational geom...
Some datasets exhibit non-trivial geometric or topological features that can be interesting to infer...
This paper studies the estimation of the conditional density f (x, ·) of Y i given X i = x, from the...
We consider practical density estimation from large data sets sampled on manifolds embedded in Eucli...
We focus on the nonparametric density estimation problem with directional data. We propose a new rul...
Certains jeux de données présentent des caractéristiques géométriques et topologiques non triviales ...
The reach of a submanifold is a crucial regularity parameter for manifold learning and geometric inf...
We study the Bayesian density estimation of data living in the offset of an unknown submanifold of t...
25 pagesInternational audienceThis paper deals with the classical problem of density estimation on t...