Improvised Admissible Kernel Function for Support Vector Machines in Banach Space for Multiclass Data
DOI:
https://doi.org/10.24297/ijct.v11i2.1173Keywords:
Multiclass Classification, Admissible Kernel Function, Support Vector Machine, Banach Space, Lévy DisrtibutionAbstract
Classification based on supervised learning theory is one of the most significant tasks frequently accomplished by so-called Intelligent Systems. Contrary to the traditional classification techniques that are used to validate or contradict a predefined hypothesis, kernel based classifiers offer the possibility to frame new hypotheses using statistical learning theory (Sangeetha and Kalpana, 2010). Support Vector Machine (SVM) is a standard kernel based learning algorithm where it improves the learning ability through experience. It is highly accurate, robust and optimal kernel based classification technique that is well-suited to many real time applications. In this paper, kernel functions related to Hilbert space and Banach Space are explained. Here, the experimental results are carried out using benchmark multiclass datasets which are taken from UCI Machine Learning Repository and their performance are compared using various metrics like support vector, support vector percentage, training time and accuracy.Downloads
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Published
2013-10-10
How to Cite
Rajendran, S., & Kalpana, B. (2013). Improvised Admissible Kernel Function for Support Vector Machines in Banach Space for Multiclass Data. INTERNATIONAL JOURNAL OF COMPUTERS &Amp; TECHNOLOGY, 11(2), 2273–2278. https://doi.org/10.24297/ijct.v11i2.1173
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Research Articles