Title of article :
Support vector machine for diagnosis cancer disease: A comparative study
Author/Authors :
Sweilam, Nasser H. Cairo University - Faculty of Science - Department of Mathematics, Egypt , Tharwat, A.A. Cairo University - Faculty of Computer Information - Department of Operation Research and Decision Support, Egypt , Abdel Moniem, N.K. Cairo University - National Cancer Institute - Department of Statistics, Egypt
Abstract :
Support vector machine has become an increasingly popular tool for machine learning tasks involving classification, regression or novelty detection. Training a support vector machine requires the solution of a very large quadratic programming problem. Traditional optimization methods cannot be directly applied due to memory restrictions. Up to now, several approaches exist for circumventing the above shortcomings and work well. Another learning algorithm, particle swarm optimization, Quantum-behave Particle Swarm for training SVM is introduced. Another approach named least square support vector machine (LSSVM) and active set strategy are introduced. The obtained results by these methods are tested on a breast cancer dataset and compared with the exact solution model problem.
Keywords :
Breast cancer diagnosis mathematical model , Support vector machine(SVM) , Particle swarm optimization(PSO) , Quantum particle swarm optimization (QPSO) , Quadratic programming(QP) , Least square (LS) method
Journal title :
Egyptian Informatics Journal
Journal title :
Egyptian Informatics Journal