Fast model selection by limiting SVM training times
Machine Learning
2016-02-11 v1 Machine Learning
Abstract
Kernelized Support Vector Machines (SVMs) are among the best performing supervised learning methods. But for optimal predictive performance, time-consuming parameter tuning is crucial, which impedes application. To tackle this problem, the classic model selection procedure based on grid-search and cross-validation was refined, e.g. by data subsampling and direct search heuristics. Here we focus on a different aspect, the stopping criterion for SVM training. We show that by limiting the training time given to the SVM solver during parameter tuning we can reduce model selection times by an order of magnitude.
Cite
@article{arxiv.1602.03368,
title = {Fast model selection by limiting SVM training times},
author = {Aydin Demircioglu and Daniel Horn and Tobias Glasmachers and Bernd Bischl and Claus Weihs},
journal= {arXiv preprint arXiv:1602.03368},
year = {2016}
}