Nonparametric Linear Feature Learning in Regression Through Regularisation

07/24/2023
by   Bertille Follain, et al.
0

Representation learning plays a crucial role in automated feature selection, particularly in the context of high-dimensional data, where non-parametric methods often struggle. In this study, we focus on supervised learning scenarios where the pertinent information resides within a lower-dimensional linear subspace of the data, namely the multi-index model. If this subspace were known, it would greatly enhance prediction, computation, and interpretation. To address this challenge, we propose a novel method for linear feature learning with non-parametric prediction, which simultaneously estimates the prediction function and the linear subspace. Our approach employs empirical risk minimisation, augmented with a penalty on function derivatives, ensuring versatility. Leveraging the orthogonality and rotation invariance properties of Hermite polynomials, we introduce our estimator, named RegFeaL. By utilising alternative minimisation, we iteratively rotate the data to improve alignment with leading directions and accurately estimate the relevant dimension in practical settings. We establish that our method yields a consistent estimator of the prediction function with explicit rates. Additionally, we provide empirical results demonstrating the performance of RegFeaL in various experiments.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/30/2021

A General Framework of Nonparametric Feature Selection in High-Dimensional Data

Nonparametric feature selection in high-dimensional data is an important...
research
03/22/2022

On Supervised Feature Selection from High Dimensional Feature Spaces

The application of machine learning to image and video data often yields...
research
06/05/2020

Learning rates for partially linear support vector machine in high dimensions

This paper analyzes a new regularized learning scheme for high dimension...
research
10/08/2022

An Efficient and Continuous Voronoi Density Estimator

We introduce a non-parametric density estimator deemed Radial Voronoi De...
research
03/03/2019

Empirical priors for prediction in sparse high-dimensional linear regression

Often the primary goal of fitting a regression model is prediction, but ...
research
02/07/2022

Effects of Parametric and Non-Parametric Methods on High Dimensional Sparse Matrix Representations

The semantics are derived from textual data that provide representations...
research
06/25/2020

Parametric Instance Classification for Unsupervised Visual Feature Learning

This paper presents parametric instance classification (PIC) for unsuper...

Please sign up or login with your details

Forgot password? Click here to reset