Estimation of Local Geometric Structure on Manifolds from Noisy Data

Abstract

A common observation in data-driven applications is that high-dimensional data have a low intrinsic dimension, at least locally. In this work, we consider the problem of point estimation for manifold-valued data. Namely, given a finite set of noisy samples of $\mathcal{M}$, a $d$ dimensional submanifold of $\mathbb{R}^D$, and a point $r$ near the manifold we aim to project $r$ onto the manifold. Assuming that the data was sampled uniformly from a tubular neighborhood of a $k$-times smooth boundaryless and compact manifold, we present an algorithm that takes $r$ from this neighborhood and outputs $\hat p_n\in \mathbb{R}^D$, and $\widehat{T_{\hat p_n}\mathcal{M}}$ an element in the Grassmannian $Gr(d, D)$. We prove that as the number of samples $n\to\infty$, the point $\hat p_n$ converges to $\mathbf{p}\in \mathcal{M}$, the projection of $r$ onto $\mathcal{M}$, and $\widehat{T_{\hat p_n}\mathcal{M}}$ converges to $T_{\mathbf{p}}\mathcal{M}$ (the tangent space at that point) with high probability. Furthermore, we show that $\hat p_n$ approaches the manifold with an asymptotic rate of $n^{-\frac{k}{2k + d}}$, and that $\hat p_n, \widehat{T_{\hat p_n}\mathcal{M}}$ approach $\mathbf{p}$ and $T_{\mathbf{p}}\mathcal{M}$ correspondingly with asymptotic rates of $n^{-\frac{k-1}{2k + d}}$. %While we These rates coincide with the optimal rates for the estimation of function derivatives.

Cite

Text

Aizenbud and Sober. "Estimation of Local Geometric Structure on Manifolds from Noisy Data." Journal of Machine Learning Research, 2025.

Markdown

[Aizenbud and Sober. "Estimation of Local Geometric Structure on Manifolds from Noisy Data." Journal of Machine Learning Research, 2025.](https://mlanthology.org/jmlr/2025/aizenbud2025jmlr-estimation/)

BibTeX

@article{aizenbud2025jmlr-estimation,
  title     = {{Estimation of Local Geometric Structure on Manifolds from Noisy Data}},
  author    = {Aizenbud, Yariv and Sober, Barak},
  journal   = {Journal of Machine Learning Research},
  year      = {2025},
  pages     = {1-89},
  volume    = {26},
  url       = {https://mlanthology.org/jmlr/2025/aizenbud2025jmlr-estimation/}
}