Estimation of Predictive Performance in High-Dimensional Data Settings using Learning Curves
Abstract
In high-dimensional prediction settings, it remains challenging to reliably estimate the test performance. To address this challenge, a novel performance estimation framework is presented. This framework, called Learn2Evaluate, is based on learning curves by fitting a smooth monotone curve depicting test performance as a function of the sample size. Learn2Evaluate has several advantages compared to commonly applied performance estimation methodologies. Firstly, a learning curve offers a graphical overview of a learner. This overview assists in assessing the potential benefit of adding training samples and it provides a more complete comparison between learners than performance estimates at a fixed subsample size. Secondly, a learning curve facilitates in estimating the performance at the total sample size rather than a subsample size. Thirdly, Learn2Evaluate allows the computation of a theoretically justified and useful lower confidence bound. Furthermore, this bound may be tightened by performing a bias correction. The benefits of Learn2Evaluate are illustrated by a simulation study and applications to omics data.
Cite
@article{arxiv.2206.03825,
title = {Estimation of Predictive Performance in High-Dimensional Data Settings using Learning Curves},
author = {Jeroen M. Goedhart and Thomas Klausch and Mark A. van de Wiel},
journal= {arXiv preprint arXiv:2206.03825},
year = {2022}
}
Comments
19 pages, 2 figures, 2 tables