2010 3rd International Conference on Emerging Trends in Engineering and Technology 2010
DOI: 10.1109/icetet.2010.134
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On Performing Classification Using SVM with Radial Basis and Polynomial Kernel Functions

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Cited by 56 publications
(31 citation statements)
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“…In this table, we compared the best results of our proposed method with the state-of-art method Support Vector Machines. To perform this comparison, we performed the experiments using two approaches: the linear SVM (SVM-L) and polynomial SVM (SVM-P) [8], [9]. From the curves presented at Figures 4 to 9, we can conclude that increasing the quantity of principal components used improves the system performance.…”
Section: Experiments and Resultsmentioning
confidence: 99%
“…In this table, we compared the best results of our proposed method with the state-of-art method Support Vector Machines. To perform this comparison, we performed the experiments using two approaches: the linear SVM (SVM-L) and polynomial SVM (SVM-P) [8], [9]. From the curves presented at Figures 4 to 9, we can conclude that increasing the quantity of principal components used improves the system performance.…”
Section: Experiments and Resultsmentioning
confidence: 99%
“…Support vector machines allow flexible selection of the degree to which one wishes to have a wide plane of separation versus the number of points that are wrong owing to the wide plane. These learning machines were invented some time ago (42), and the reason for their recent greater popularity is the addition of basis functions that can map points to other dimensions by using nonlinear relationships (43,44) and thus classify examples that are not linearly separable. This capability gives support vector machine algorithms a big advantage over many other machine learning methods.…”
Section: Types Of Machine Learning Algorithmsmentioning
confidence: 99%
“…This paper uses Radial basis function (RBF) kernel in SVM, which is viable for leukocyte classi¯cation because of its high accuracy. 32 The function is de¯ned as…”
Section: Classi¯cationmentioning
confidence: 99%