English

Bayesian Manifold Regression

Statistics Theory 2014-06-17 v2 Statistics Theory

Abstract

There is increasing interest in the problem of nonparametric regression with high-dimensional predictors. When the number of predictors DD is large, one encounters a daunting problem in attempting to estimate a DD-dimensional surface based on limited data. Fortunately, in many applications, the support of the data is concentrated on a dd-dimensional subspace with dDd \ll D. Manifold learning attempts to estimate this subspace. Our focus is on developing computationally tractable and theoretically supported Bayesian nonparametric regression methods in this context. When the subspace corresponds to a locally-Euclidean compact Riemannian manifold, we show that a Gaussian process regression approach can be applied that leads to the minimax optimal adaptive rate in estimating the regression function under some conditions. The proposed model bypasses the need to estimate the manifold, and can be implemented using standard algorithms for posterior computation in Gaussian processes. Finite sample performance is illustrated in an example data analysis.

Keywords

Cite

@article{arxiv.1305.0617,
  title  = {Bayesian Manifold Regression},
  author = {Yun Yang and David B. Dunson},
  journal= {arXiv preprint arXiv:1305.0617},
  year   = {2014}
}

Comments

We added a new section (Section 3) with two empirical Bayes approaches to make our method adaptive to the intrinsic dimension of the manifold with theoretical guarantees. We also rearranged the paper and deleted a subsection in the previous version that lacks rigorous theoretical support

R2 v1 2026-06-22T00:10:42.099Z