Abstract
AbstractIn this paper we propose a novel methodology to construct Optimal Classification Trees that takes into account that noisy labels may occur in the training sample. The motivation of this new methodology is based on the superaditive effect of combining together margin based classifiers and outlier detection techniques. Our approach rests on two main elements: (1) the splitting rules for the classification trees are designed to maximize the separation margin between classes applying the paradigm of SVM; and (2) some of the labels of the training sample are allowed to be changed during the construction of the tree trying to detect the label noise. Both features are considered and integrated together to design the resulting Optimal Classification Tree. We present a Mixed Integer Non Linear Programming formulation for the problem, suitable to be solved using any of the available off-the-shelf solvers. The model is analyzed and tested on a battery of standard datasets taken from UCI Machine Learning repository, showing the effectiveness of our approach. Our computational results show that in most cases the new methodology outperforms both in accuracy and AUC the results of the benchmarks provided by OCT and OCT-H.
Funder
Fundación BBVA
ministerio de ciencia, innovación y universidades
Consejería de Economía, Innovación, Ciencia y Empleo, Junta de Andalucía
Publisher
Springer Science and Business Media LLC
Subject
Applied Mathematics,Computer Science Applications,Statistics and Probability
Reference30 articles.
1. Agarwal N, Balasubramanian VN, Jawahar C (2018) Improving multiclass classification by deep networks using dagsvm and triplet loss. Pattern Recogn Lett 112:184–190
2. Benati S, Puerto J, Rodríguez-Chía AM (2017) Clustering data that are graph connected. Eur J Oper Res 261(1):43–53
3. Benati S, Ponce D, Puerto J, Rodríguez-Chía AM (2021) A Branch-and-price procedure for clustering data that are graph connected. Eur J Oper Res. https://doi.org/10.1016/j.ejor.2021.05.043
4. Bennett, K. P., and Blue, J. A support vector machine approach to decision trees. In 1998 IEEE International Joint Conference on Neural Networks Proceedings. IEEE World Congress on Computational Intelligence (Cat. No. 98CH36227) (1998), vol. 3, IEEE, pp. 2396–2401
5. Bertsimas D, Dunn J (2017) Optimal classification trees. Mach Learn 106(7):1039–1082
Cited by
9 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献