An Efficient Angle-based Universum Least Squares Twin Support Vector Machine for Classification

Author:

Richhariya B.1,Tanveer M.1,

Affiliation:

1. Discipline of Mathematics, Indian Institute of Technology Indore, Simrol, Indore, India

Abstract

Universum-based support vector machine incorporates prior information about the distribution of data in training of the classifier. This leads to better generalization performance but with increased computation cost. Various twin hyperplane-based models are proposed to reduce the computation cost of universum-based algorithms. In this work, we present an efficient angle-based universum least squares twin support vector machine (AULSTSVM) for classification. This is a novel approach of incorporating universum in the formulation of least squares-based twin SVM model. First, the proposed AULSTSVM constructs a universum hyperplane, which is proximal to universum data points. Then, the classifying hyperplane is constructed by minimizing the angle with the universum hyperplane. This gives prior information about data distribution to the classifier. In addition to the quadratic loss, we introduce linear loss in the optimization problem of the proposed AULSTSVM, which leads to lesser computation cost of the model. Numerical experiments are performed on several benchmark synthetic, real-world, and large-scale datasets. The results show that proposed AULSTSVM performs better than existing algorithms w.r.t. generalization performance as well as computation time. Moreover, an application to Alzheimer’s disease is presented, where AULSTSVM obtains accuracy of 95% for classification of healthy and Alzheimers subjects. The results imply that the proposed AULSTSVM is a better alternative for classification of large-scale datasets and biomedical applications.

Funder

Science and Engineering Research Board

Department of Science and Technology, INDIA

Council of Scientific & Industrial Research (CSIR), New Delhi, INDIA

Alzheimer’s Disease Neuroimaging Initiative

DOD ADNI

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications

Reference46 articles.

1. Keel data-mining software tool: Data set repository, integration of algorithms and experimental analysis framework.J;Alcalá-Fdez Jesús;Multiple-Valued Logic Soft Comput.,2011

2. Clustering by twin support vector machine and least square twin support vector classifier with uniform output coding

3. Classification of Alzheimer's disease and prediction of mild cognitive impairment-to-Alzheimer's conversion from structural magnetic resource imaging using feature ranking and a genetic algorithm

4. Olivier Chapelle Alekh Agarwal Fabian H. Sinz and Bernhard Schölkopf. 2008. An analysis of inference with the universum. In Advances in Neural Information Processing Systems. 1369–1376. Olivier Chapelle Alekh Agarwal Fabian H. Sinz and Bernhard Schölkopf. 2008. An analysis of inference with the universum. In Advances in Neural Information Processing Systems. 1369–1376.

5. Recognition of schizophrenia with regularized support vector machine and sequential region of interest selection using structural magnetic resonance imaging. Sci;Chin Rowena;Rep.,2018

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