Classifier Selection with Permutation Tests
Abstract
This work presents a content-based recommender system for machine learning classifier algorithms. Given a new data set, a recommendation of what classifier is likely to perform best is made based on classifier performance over similar known data sets. This similarity is measured according to a data set characterization that includes several state-of-the-art metrics taking into account physical structure, statis- tics, and information theory. A novelty with respect to prior work is the use of a robust approach based on permutation tests to directly assess whether a given learning algorithm is able to exploit the attributes in a data set to predict class labels, and compare it to the more commonly used F-score metric for evalu- ating classifier performance. To evaluate our approach, we have conducted an extensive experimentation including 8 of the main machine learning classification methods with varying configurations and 65 bi- nary data sets, leading to over 2331 experiments. Our results show that using the information from the permutation test clearly improves the quality of the recommendations.
Cite
@article{arxiv.1711.09708,
title = {Classifier Selection with Permutation Tests},
author = {Marta Arias and Argimiro Arratia and Ariel Duarte-Lopez},
journal= {arXiv preprint arXiv:1711.09708},
year = {2017}
}
Comments
20th International Conference of the Catalan Association for Artificial Intelligence (CCIA 2017)