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On the edited fuzzy K-nearest neighbor rule

机译:关于编辑的模糊K最近邻规则

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摘要

Classification of objects is an important area in a variety of fields and applications. In the presence of full knowledge of the underlying joint distributions, Bayes analysis yields an optimal decision procedure and produces optimal error rates. Many different methods are available to make a decision in those cases where information of the underlying joint distributions is not presented. The k nearest neighbor rule (k-NNR) is a well-known nonparametric decision procedure. Many classification rules based on the k-NNR have already been proposed and applied in diverse substantive areas. The edited k-NNR proposed by D.L. Wilson (1972) would be an important one. Fuzzy theory, originated by L.A. Zadeh (1965), is widely used to represent the uncertainty of class membership. The fuzzy k-NNR has been proposed by several investigators. In this paper an edited type of the fuzzy k-NNR is developed. Next, some asymptotic properties of the proposed edited fuzzy k-NNR are created. Moreover, numerical comparisons are made between the proposed edited fuzzy k-NNR and the other fuzzy k-NNR. Those results confirm that the edited fuzzy k-NNR has a better performance than the fuzzy k-NNR.
机译:对象的分类是各个领域和应用中的重要领域。在充分了解潜在的联合分布的情况下,贝叶斯分析产生了最佳决策程序并产生了最佳错误率。在没有提供基本联合分布信息的情况下,可以使用许多不同的方法进行决策。 k最近邻规则(k-NNR)是众所周知的非参数决策过程。已经提出了许多基于k-NNR的分类规则,并将其应用于各种实质性领域。 D.L.提出的编辑的k-NNR威尔逊(1972)将是一个重要的人物。由L.A. Zadeh(1965)提出的模糊理论被广泛用来代表阶级成员的不确定性。一些研究者已经提出了模糊k-NNR。在本文中,开发了一种模糊k-NNR的编辑类型。接下来,创建拟议的模糊k-NNR的一些渐近性质。此外,在拟议的编辑后的模糊k-NNR和其他模糊k-NNR之间进行了数值比较。这些结果证实,所编辑的模糊k-NNR比模糊k-NNR具有更好的性能。

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