Pairwise Difference Learning for Classification
Abstract
Pairwise difference learning (PDL) has recently been introduced as a new meta-learning technique for regression. Instead of learning a mapping from instances to outcomes in the standard way, the key idea is to learn a function that takes two instances as input and predicts the difference between the respective outcomes. Given a function of this kind, predictions for a query instance are derived from every training example and then averaged. This paper extends PDL toward the task of classification and proposes a meta-learning technique for inducing a PDL classifier by solving a suitably defined (binary) classification problem on a paired version of the original training data. We analyze the performance of the PDL classifier in a large-scale empirical study and find that it outperforms state-of-the-art methods in terms of prediction performance. Last but not least, we provide an easy-to-use and publicly available implementation of PDL in a Python package.
Cite
@article{arxiv.2406.20031,
title = {Pairwise Difference Learning for Classification},
author = {Mohamed Karim Belaid and Maximilian Rabus and Eyke Hüllermeier},
journal= {arXiv preprint arXiv:2406.20031},
year = {2024}
}