Support vector machine(SVM) is an important classification tool in the pattern recognition and machine learning community,but its training is a time-consuming process.To deal with this problem,we propose a novel method to mine the useful information about classification hidden in the training sample for improving the training algorithm,and every training point is assigned to a value that represents the classification information,respectively,where training points with the higher values are chosen as candidate support vectors for SVM training.The classification information value for a training point is computed based on the classification accuracy of an appropriate hyperplane for the training sample,where the hyperplane goes through the mapped target of the training point in feature space defined by a kernel function.Experimental results on various benchmark datasets show the effectiveness of our algorithm.
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机译:La formation des agents de maitrise du fond dans les charbonnages de la Communaute。 Comput rendu de la session d'etudes des 4 et 5 juin 1959 a Luxembourg = supervisors training in the coal-mining of the Community。研究日的会议记录,1959年6月4日至5日,卢森堡