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使用模糊K指数近邻方法的原型选择算法

A Prototype Selection Algorithm Using Fuzzy k-Important Nearest Neighbor Method

作者:Zhen-Xing ZhangXue-Wei TianSang-Hong LeeJoon S. Lim 加工时间:2014-09-22 信息来源:科技报告(Other) 索取原文[5 页]
关键词:K近邻(KNN);原型选择(PS);模糊K-重要近邻(FKINN)
摘 要:The k-Nearest Neighbor (KNN) algorithm is widely used as a simple and effective classification algorithm. While its main advantage is its simplicity, its main shortcoming is its computational complexity for large training sets. A Prototype Selection (PS) method is used to optimize the efficiency of the algorithm so that the disadvantages can be overcome. This paper presents a new PS algorithm, namely Fuzzy k-Important Nearest Neighbor (FKINN) algorithm. In this algorithm, an important nearest neighbor selection rule is introduced. When classifying a data set with the FKINN algorithm, the most repeated selection sample is defined as an important nearest neighbor. To verify the performance of the algorithm, five UCI benchmarking databases are considered. Experiments show that the algorithm effectively deletes redundant or irrelevant prototypes while maintaining the same level of classification accuracy as that of the KNN algorithm.
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