The Investigation and Application of SVC and SVR in Handling Missing Values

Information Science and Engineering(2009)

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摘要
The great achievements have been approached in the development of support vector machine (SVM). It has been successfully used for solving classification and regression problems. This paper aims at proposing two algorithms based on SVC and SVR which are two applications of SVM in the fields of classification and regression, to handle both nominal and numerical missing values. Two experiments are conducted. The results indicate that our algorithms provide a high accuracy when compared with some other commonly used algorithms.
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关键词
nominal missing values,svc,regression problem,high accuracy,missing values,svr,regression analysis,pattern classification,great achievement,support vector machine,classification problem,numerical missing value,numerical missing values,support vector machines,accuracy,classification algorithms,kernel
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