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基于一类分类方法的多类分类研究

Study on the Multiclass Classifying Based on the One-class Classification
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摘要 在分析非线性数据处理新方法—核方法理论的基础,研究基于一类分类方法的多类分类的基本原理,提出应用于多类分类的可信度函数,使分类的结果更具有可信度.最后,以某企业对供应商关系调查数据为例,将这种方法应用于企业商业关系分析中,结果表明该方法的有效性,为非线性数据分类提供了一种新方法. Based on the analysis of the basic theory of in the new method for processing the no-line date-The Kernel Methods, the basic principles of the multiclass classifying based on the One-class Classification have been studied. The function of for multiclass classifying has been put forward. It makes the results of classifying more reliability. Finally, the authors using the method to analysis the investigating date about the relationships between a firm and its supplies. The results of classifying show the classifying method is effective.
作者 李焕荣 林健
出处 《数学的实践与认识》 CSCD 北大核心 2007年第4期12-20,共9页 Mathematics in Practice and Theory
基金 广东省自然科学基金资助项目(04011765) 江门市科技计划项目资助(2005)
关键词 核方法 一类分类方法 多类分类 关系网络 关系分析 kernel methods one-class classification multiclass classifying
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参考文献11

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