Using Dimension Reduction to Improve the Classification of High-dimensional Data
Machine Learning
2015-05-27 v1 Computer Vision and Pattern Recognition
Abstract
In this work we show that the classification performance of high-dimensional structural MRI data with only a small set of training examples is improved by the usage of dimension reduction methods. We assessed two different dimension reduction variants: feature selection by ANOVA F-test and feature transformation by PCA. On the reduced datasets, we applied common learning algorithms using 5-fold cross-validation. Training, tuning of the hyperparameters, as well as the performance evaluation of the classifiers was conducted using two different performance measures: Accuracy, and Receiver Operating Characteristic curve (AUC). Our hypothesis is supported by experimental results.
Cite
@article{arxiv.1505.06907,
title = {Using Dimension Reduction to Improve the Classification of High-dimensional Data},
author = {Andreas Grünauer and Markus Vincze},
journal= {arXiv preprint arXiv:1505.06907},
year = {2015}
}
Comments
Presented at OAGM Workshop, 2015 (arXiv:1505.01065)