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中国图象图形学报 2005
Applications of Support Vector Machines in Classification
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Abstract:
This paper introduces the theory and training algorithm of the support vector machine which is applied in nonlinear classification and recognition by the way of bringing in the concept such as structural risk minimization principle and optimal hyperplane,then a set of nonlinear binary samples are successfully classified by using different kernel functions,followed by discussion to the results.After that current multi-class classification algorithms and application areas are reviewed.Finally future developments are prospected.