Universum parametric $$\nu $$-support vector regression for binary classification problems with its applications
-
Published:2023-05-26
Issue:
Volume:
Page:
-
ISSN:0254-5330
-
Container-title:Annals of Operations Research
-
language:en
-
Short-container-title:Ann Oper Res
Author:
Moosaei HosseinORCID, Bazikar Fatemeh, Hladík Milan
Abstract
AbstractUniversum data sets, a collection of data sets that do not belong to any specific class in a classification problem, give previous information about data in the mathematical problem under consideration to enhance the classifiers’ generalization performance. Recently, some researchers have integrated Universum data into the existing models to propose new models which result in improved classification performance. Inspired by these Universum models, an efficient parametric$$ \nu $$ν-support vector regression with Universum data ($$ {\mathfrak {U}} $$UPar-$$ \nu $$ν-SVR) is proposed in this work. This method, which finds two non-parallel hyperplanes by solving one optimization problem and considers heteroscedastic noise, overcomes some common disadvantages of the previous methods. The$$ {\mathfrak {U}} $$UPar-$$ \nu $$ν-SVR includes unlabeled samples that don’t belong to any class in the training process, which results in a quadratic programming problem. Two approaches are proposed to solve this problem. The first approach derives the dual formulation using the Lagrangian function and KKT conditions. Furthermore, a least squares parametric$$ \nu $$ν-support vector regression with Universum data (named LS-$$ {\mathfrak {U}} $$UPar-$$ \nu $$ν-SVR) is suggested to further increase the generalization performance. The LS-$$ {\mathfrak {U}} $$UPar-$$ \nu $$ν-SVR solves a single system of linear equations, instead of addressing a quadratic programming problem in the dual formulation. Numerical experiments on artificial, UCI, credit card, NDC, and handwritten digit recognition data sets show that the suggested Universum model and its solving methodologies improve prediction accuracy.
Funder
Univerzita Karlova v Praze Grantová Agentura České Republiky
Publisher
Springer Science and Business Media LLC
Subject
Management Science and Operations Research,General Decision Sciences
Reference71 articles.
1. Arabasadi, Z., Alizadehsani, R., Roshanzamir, M., Moosaei, H., & Yarifard, A. A. (2017). Computer aided decision making for heart disease detection using hybrid neural network-Genetic algorithm. Computer Methods and Programs in Biomedicine, 141, 19–26. 2. Ayoobi, N., Sharifrazi, D., Alizadehsani, R., Shoeibi, A., Gorriz, J. M., Moosaei, H., Khosravi, A., Nahavandi, S., Chofreh, A. G., Goni, F. A., Klemeš, J. J., & Mosavi, A. (2021). Time series forecasting of new cases and new deaths rate for COVID-19 using deep learning methods. Results in Physics, 27, 104,495. 3. Bazikar, F., Ketabchi, S., & Moosaei, H. (2020). DC programming and DCA for parametric-margin $$\nu $$-support vector machine. Applied Intelligence, 50(6), 1763–1774. 4. Bi, J., & Bennett, K. P. (2003). A geometric approach to support vector regression. Neurocomputing, 55(1–2), 79–108. 5. Boyd, S., & Vandenberghe, L. (2004). Convex optimization. Cambridge University Press.
Cited by
2 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
|
|