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A penalty function method for designing efficient robust classifiers with input space optimal separating surfaces


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dc.contributor.author Uçar, Ayşegül
dc.contributor.author Demir, Yakup
dc.contributor.author Güzeliş, Cüneyt
dc.date.accessioned 2016-10-26T11:05:52Z
dc.date.available 2016-10-26T11:05:52Z
dc.date.issued 2014-01-01
dc.identifier.citation Uçar, A., Demir, Y. ve Güzeliş, C. (2014). A penalty function method for designing efficient robust classifiers with input space optimal separating surfaces. Turkish Journal of Electrical Engineering & Computer Sciences, 22(6), 1664-1685. tr_TR
dc.identifier.uri http://hdl.handle.net/11508/8910
dc.description.abstract This paper considers robust classification as a constrained optimization problem. Where the constraints are nonlinear, inequalities defining separating surfaces, whose half spaces include or exclude the data depending on their classes and the cost, are used for attaining robustness and providing the minimum volume regions specified by the half spaces of the surfaces. The constraints are added to the cost using penalty functions to get an unconstrained problem for which the gradient descent method can be used. The separating surfaces, which are aimed to be found in this way, are optimal in the input data space in contrast to the conventional support vector machine (SVM) classifiers designed by the Lagrange multiplier method, which are optimal in the (transformed) feature space. Two types of surfaces, namely hyperellipsoidal and Gaussian-based surfaces created by radial basis functions (RBFs), are focused on in this paper due to their generality. Ellipsoidal classifiers are trained in 2 stages: a spherical surface is found in the first stage, and then the centers and the radii found in the first stage are taken as the initial input for the second stage to find the center and covariance matrix parameters of the ellipsoids. The penalty function approach to the design of robust classifiers enables the handling of multiclass classification. Compared to SVMs, multiple-kernel SVMs, and RBF classifiers, the proposed classifiers are found to be more efficient in terms of the required training time, parameter setting time, testing time, memory usage, and generalization error, especially for medium to large datasets. RBF-based input space optimal classifiers are also introduced for problems that are far from ellipsoidal, e.g., 2 Spirals. tr_TR
dc.language.iso İngilizce tr_TR
dc.rights info:eu-repo/semantics/openAccess tr_TR
dc.subject Fırat Üniversitesi Kütüphanesi::TEKNOLOJİ tr_TR
dc.subject.ddc Classification tr_TR
dc.subject.ddc Gradient methods tr_TR
dc.subject.ddc Penalty approach tr_TR
dc.subject.ddc Spherical/elliptical separation tr_TR
dc.subject.ddc Support vector machines tr_TR
dc.title A penalty function method for designing efficient robust classifiers with input space optimal separating surfaces tr_TR
dc.type Makale - Bilimsel Dergi Makalesi - Çok Yazarlı tr_TR
dc.contributor.YOKID TR12160 tr_TR
dc.contributor.YOKID TR24225 tr_TR
dc.relation.journal Turkish Journal of Electrical Engineering & Computer Sciences tr_TR
dc.identifier.volume 22 tr_TR
dc.identifier.issue 6 tr_TR
dc.identifier.pages 1664;1685
dc.identifier.doi 10.3906/elk-1301-190
dc.published.type Uluslararası tr_TR


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