Sparse Learning for Variable Selection with Structures and Nonlinearities

03/26/2019
by   Magda Gregorova, et al.
0

In this thesis we discuss machine learning methods performing automated variable selection for learning sparse predictive models. There are multiple reasons for promoting sparsity in the predictive models. By relying on a limited set of input variables the models naturally counteract the overfitting problem ubiquitous in learning from finite sets of training points. Sparse models are cheaper to use for predictions, they usually require lower computational resources and by relying on smaller sets of inputs can possibly reduce costs for data collection and storage. Sparse models can also contribute to better understanding of the investigated phenomenons as they are easier to interpret than full models.

READ FULL TEXT
research
09/13/2019

SuRF: a New Method for Sparse Variable Selection, with Application in Microbiome Data Analysis

In this paper, we present a new variable selection method for regression...
research
04/27/2020

Using reference models in variable selection

Variable selection, or more generally, model reduction is an important a...
research
04/08/2023

DiscoVars: A New Data Analysis Perspective – Application in Variable Selection for Clustering

We present a new data analysis perspective to determine variable importa...
research
06/23/2020

SWAG: A Wrapper Method for Sparse Learning

Predictive power has always been the main research focus of learning alg...
research
06/07/2018

Feature selection in functional data classification with recursive maxima hunting

Dimensionality reduction is one of the key issues in the design of effec...
research
10/29/2016

A general multiblock method for structured variable selection

Regularised canonical correlation analysis was recently extended to more...
research
01/04/2023

Projection predictive variable selection for discrete response families with finite support

The approximate latent-space approach to the projective part of the proj...

Please sign up or login with your details

Forgot password? Click here to reset