Author:
Nissenbaum Yehuda,Painsky Amichai
Abstract
Multi-target learning (MTL) is a popular machine learning technique which considers simultaneous prediction of multiple targets. MTL schemes utilize a variety of methods, from traditional linear models to more contemporary deep neural networks. In this work we introduce a novel, highly interpretable, tree-based MTL scheme which exploits the correlation between the targets to obtain improved prediction accuracy. Our suggested scheme applies cross-validated splitting criterion to identify correlated targets at every node of the tree. This allows us to benefit from the correlation among the targets while avoiding overfitting. We demonstrate the performance of our proposed scheme in a variety of synthetic and real-world experiments, showing a significant improvement over alternative methods. An implementation of the proposed method is publicly available at the first author's webpage.
Funder
Ministry of Culture and Sport
Reference41 articles.
1. The benefits of target relations: a comparison of multitask extensions and classifier chains;Adıyeke;Pattern Recognit,2020
2. “A two-step model for drug-target interaction prediction with predictive bi-clustering trees and xgboost,”;Alves,2022
3. “Stepwise induction of multi-target model trees,”;Appice,2007
4. Beyond global and local multi-target learning;Basgalupp;Inf. Sci,2021
5. Predicting multivariate responses in multiple linear regression;Breiman;J. R. Stat. Soc. Ser. B,1997