Efficient Parallel Processing of k-Nearest Neighbor Queries by Using a Centroid-based and Hierarchical Clustering Algorithm

IF 1.7 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE ADCAIJ-Advances in Distributed Computing and Artificial Intelligence Journal Pub Date : 2022-05-26 DOI:10.30564/aia.v4i1.4668
Elaheh Gavagsaz
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引用次数: 2

Abstract

The k-Nearest Neighbor method is one of the most popular techniques for both classification and regression purposes. Because of its operation, the application of this classification may be limited to problems with a certain number of instances, particularly, when run time is a consideration. However, the classification of large amounts of data has become a fundamental task in many real-world applications. It is logical to scale the k-Nearest Neighbor method to large scale datasets. This paper proposes a new k-Nearest Neighbor classification method (KNN-CCL) which uses a parallel centroid-based and hierarchical clustering algorithm to separate the sample of training dataset into multiple parts. The introduced clustering algorithm uses four stages of successive refinements and generates high quality clusters. The k-Nearest Neighbor approach subsequently makes use of them to predict the test datasets. Finally, sets of experiments are conducted on the UCI datasets. The experimental results confirm that the proposed k-Nearest Neighbor classification method performs well with regard to classification accuracy and performance.
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基于质心和层次聚类算法的k近邻查询并行处理
k近邻方法是用于分类和回归目的的最流行的技术之一。由于其操作,这种分类的应用可能仅限于具有一定数量实例的问题,特别是在考虑运行时时。然而,在许多实际应用中,对大量数据进行分类已经成为一项基本任务。将k近邻方法扩展到大规模数据集是合乎逻辑的。本文提出了一种新的k-最近邻分类方法(KNN-CCL),该方法采用基于并行质心的分层聚类算法,将训练数据集样本分离成多个部分。本文介绍的聚类算法采用四个阶段的连续细化,生成高质量的聚类。k近邻方法随后利用它们来预测测试数据集。最后,在UCI数据集上进行了多组实验。实验结果证实了所提出的k-最近邻分类方法在分类精度和性能上都有良好的表现。
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来源期刊
CiteScore
1.40
自引率
0.00%
发文量
22
审稿时长
4 weeks
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