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EE k NN: k -Nearest Neighbor Classifier with an Evidential Editing Procedure for Training Samples ?

机译:EE k NN:k-最近邻分类器,带有用于训练样本的证据编辑程序?

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The k -nearest neighbor ( k NN) rule is one of the most popular classification algorithms applied in many fields because it is very simple to understand and easy to design. However, one of the major problems encountered in using the k NN rule is that all of the training samples are considered equally important in the assignment of the class label to the query pattern. In this paper, an evidential editing version of the k NN rule is developed within the framework of belief function theory. The proposal is composed of two procedures. An evidential editing procedure is first proposed to reassign the original training samples with new labels represented by an evidential membership structure, which provides a general representation model regarding the class membership of the training samples. After editing, a classification procedure specifically designed for evidently edited training samples is developed in the belief function framework to handle the more general situation in which the edited training samples are assigned dependent evidential labels. Three synthetic datasets and six real datasets collected from various fields were used to evaluate the performance of the proposed method. The reported results show that the proposal achieves better performance than other considered k NN-based methods, especially for datasets with high imprecision ratios.
机译:k最近邻(k NN)规则是在许多领域中应用最广泛的分类算法之一,因为它非常易于理解且易于设计。但是,使用k NN规则遇到的主要问题之一是,在将类标签分配给查询模式时,所有训练样本都被认为同等重要。在本文中,在信念函数理论的框架内开发了k NN规则的证据编辑版本。该提案由两个程序组成。首先提出了证据编辑程序,以用证据成员结构表示的新标签重新分配原始训练样本,这提供了有关训练样本类成员的通用表示模型。编辑后,在信念函数框架中开发了专门为明显编辑的训练样本设计的分类程序,以处理更普遍的情况,在这种情况下,将编辑的训练样本分配给相关的证据标签。从各个领域收集的三个综合数据集和六个真实数据集用于评估该方法的性能。报告的结果表明,该提案比其他基于k NN的方法具有更好的性能,特别是对于具有高不精确率的数据集。

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