A maximum principle argument for the uniform convergence of graph Laplacian regressors

01/29/2019
by   Nicolas Garcia Trillos, et al.
0

We study asymptotic consistency guarantees for a non-parametric regression problem with Laplacian regularization. In particular, we consider (x_1, y_1), ..., (x_n, y_n) samples from some distribution on the cross product M×R, where M is a m-dimensional manifold embedded in R^d. A geometric graph on the cloud {x_1, ..., x_n } is constructed by connecting points that are within some specified distance ε_n. A suitable semi-linear equation involving the resulting graph Laplacian is used to obtain a regressor for the observed values of y. We establish probabilistic error rates for the uniform difference between the regressor constructed from the observed data and the Bayes regressor (or trend) associated to the ground-truth distribution. We give the explicit dependence of the rates in terms of the parameter ε_n, the strength of regularization β_n, and the number of data points n. Our argument relies on a simple, yet powerful, maximum principle for the graph Laplacian. We also address a simple extension of the framework to a semi-supervised setting.

READ FULL TEXT

page 6

page 7

page 8

research
06/04/2020

Rates of Convergence for Laplacian Semi-Supervised Learning with Low Labeling Rates

We study graph-based Laplacian semi-supervised learning at low labeling ...
research
07/13/2020

Lipschitz regularity of graph Laplacians on random data clouds

In this paper we study Lipschitz regularity of elliptic PDEs on geometri...
research
06/07/2013

Spectral Convergence of the connection Laplacian from random samples

Spectral methods that are based on eigenvectors and eigenvalues of discr...
research
06/21/2018

Ensemble p-Laplacian Regularization for Remote Sensing Image Recognition

Recently, manifold regularized semi-supervised learning (MRSSL) received...
research
07/19/2017

Analysis of p-Laplacian Regularization in Semi-Supervised Learning

We investigate a family of regression problems in a semi-supervised sett...
research
07/25/2020

Posterior Consistency of Semi-Supervised Regression on Graphs

Graph-based semi-supervised regression (SSR) is the problem of estimatin...
research
09/06/2022

Rates of Convergence for Regression with the Graph Poly-Laplacian

In the (special) smoothing spline problem one considers a variational pr...

Please sign up or login with your details

Forgot password? Click here to reset