Sparsity Regularization and feature selection in large dimensional data

12/06/2017
by   Nand Sharma, et al.
0

Feature selection has evolved to be an important step in several machine learning paradigms. Especially in the domains of bio-informatics and text classification which involve data of high dimensions, feature selection can help in drastically reducing the feature space. In cases where it is difficult or infeasible to obtain sufficient number of training examples, feature selection helps overcome the curse of dimensionality which in turn helps improve performance of the classification algorithm. The focus of our research here are five embedded feature selection methods which use either the ridge regression, or Lasso regression, or a combination of the two in the regularization part of the optimization function. We evaluate five chosen methods on five large dimensional datasets and compare them on the parameters of sparsity and correlation in the datasets and their execution times.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/06/2017

Sparsity Regularization for classification of large dimensional data

Feature selection has evolved to be a very important step in several mac...
research
04/21/2018

Is feature selection secure against training data poisoning?

Learning in adversarial settings is becoming an important task for appli...
research
10/04/2018

Projective Inference in High-dimensional Problems: Prediction and Feature Selection

This paper discusses predictive inference and feature selection for gene...
research
03/04/2023

Integration of Feature Selection Techniques using a Sleep Quality Dataset for Comparing Regression Algorithms

This research aims to examine the usefulness of integrating various feat...
research
02/18/2019

Sparse Regression: Scalable algorithms and empirical performance

In this paper, we review state-of-the-art methods for feature selection ...
research
06/04/2021

Top-k Regularization for Supervised Feature Selection

Feature selection identifies subsets of informative features and reduces...
research
03/20/2017

Metalearning for Feature Selection

A general formulation of optimization problems in which various candidat...

Please sign up or login with your details

Forgot password? Click here to reset