Improved pseudo nearest neighbor classification

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摘要

k-Nearest neighbor (KNN) rule is a very simple and powerful classification algorithm. In this article, we propose a new KNN-based classifier, called the local mean-based pseudo nearest neighbor (LMPNN) rule. It is motivated by the local mean-based k-nearest neighbor (LMKNN) rule and the pseudo nearest neighbor (PNN) rule, with the aim of improving the classification performance. In the proposed LMPNN, the k nearest neighbors from each class are searched as the class prototypes, and then the local mean vectors of the neighbors are yielded. Subsequently, we attempt to find the local mean-based pseudo nearest neighbor per class by employing the categorical k local mean vectors, and classify the unknown query patten according to the distances between the query and the pseudo nearest neighbors. To assess the classification performance of the proposed LMPNN, it is compared with the competing classifiers, such as LMKNN and PNN, in terms of the classification error on thirty-two real UCI data sets, four artificial data sets and three image data sets. The comprehensively experimental results suggest that the proposed LMPNN classifier is a promising algorithm in pattern recognition.

论文关键词:k-Nearest neighbor rule,Pseudo nearest neighbor rule,Local mean vector,Pattern classification,Local mean-based pseudo nearest neighbor rule

论文评审过程:Received 24 May 2013, Revised 26 June 2014, Accepted 23 July 2014, Available online 31 July 2014.

论文官网地址:https://doi.org/10.1016/j.knosys.2014.07.020