Meta-Learning for Resampling Recommendation Systems
Machine Learning
2018-09-18 v4 Applications
Computation
Methodology
Abstract
One possible approach to tackle the class imbalance in classification tasks is to resample a training dataset, i.e., to drop some of its elements or to synthesize new ones. There exist several widely-used resampling methods. Recent research showed that the choice of resampling method significantly affects the quality of classification, which raises resampling selection problem. Exhaustive search for optimal resampling is time-consuming and hence it is of limited use. In this paper, we describe an alternative approach to the resampling selection. We follow the meta-learning concept to build resampling recommendation systems, i.e., algorithms recommending resampling for datasets on the basis of their properties.
Cite
@article{arxiv.1706.02289,
title = {Meta-Learning for Resampling Recommendation Systems},
author = {Smolyakov Dmitry and Alexander Korotin and Pavel Erofeev and Artem Papanov and Evgeny Burnaev},
journal= {arXiv preprint arXiv:1706.02289},
year = {2018}
}
Comments
23 pages, 3 figures