基于反应搜索MST优化聚类的特征选择

IF 0.6 Q4 BUSINESS, FINANCE
A. Kaleemullah, A. Suresh
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引用次数: 2

摘要

数据聚类是一种分析数据的技术,在数据处理、模式识别、知识发现和机器学习等各个领域都有应用。特征聚类是不同类型的特征选择技术的一个重要范例,它旨在从给定的特征集中减少冗余和不相关的特征,以保持分类算法的负载平衡。提出了粒子群优化(PSO)和萤火虫群优化(GSO)相结合的混合算法PSO - GSO - mst。该方法可以有效地进行特征选择,并提高分类精度。聚类分析在知识发现和数据挖掘中起着重要的作用。它采用无监督学习方法,类内聚类结果相似,类间聚类结果不同。针对传统聚类算法的不足,出现了一些利用自然启发式算法进行聚类的技术。该算法利用优化的最小生成树(MST)进行聚类。本研究旨在利用粒子群和粒子群这两种著名的技术对MST进行优化。将提出的PSO-GSO-MST算法与基于聚类的特征选择(CFS)和PSO-MST算法进行了比较。结果表明,PSO-GSO-MST的分类精度比CFS提高16.9%,比PSO-MST优化后的CFS提高4.7%。研究结果表明,本文提出的算法比现有的算法性能有所提高,可用于聚类应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reactive search-MST optimized clustering-based feature selection
Data clustering is a technique for analyzing the data that is incurred in various fields such as data processing, pattern recognition, knowledge discovery and machine learning. Feature clustering is an important paradigm for different types of feature selection techniques that aims to reduce redundant and irrelevant features from a given set of features in order to maintain load balance on the classification algorithm. The work proposed a PSO–GSO–MST, a hybrid approach that combines Particle Swarm Optimization (PSO) and Glowworm Swarm Optimization (GSO). The work performs efficient feature selection with improved classification accuracy. Clustering analysis plays an important role in knowledge discovery and data mining. It adopts the unsupervised learning method, and the results of clustering are similar within the class and are different between the classes. Aiming at some shortcomings of traditional clustering algorithms, some techniques for clustering using natural heuristic algorithms have emerged. The proposed work performs cluster using optimized Minimum Spanning Tree (MST). The work aims to perform optimization of MST with the help of two renowned techniques such as PSO and GSO. The proposed PSO–GSO–MST is compared with state-of-the-art algorithms such as Clustering-based Feature Selection (CFS) and PSO–MST. The results show that the classification accuracy for the proposed PSO–GSO–MST performs better by 16.9% than CFS and by 4.7% than PSO–MST optimized CFS, respectively. The outcome of the work proves that the proposed algorithm achieves improved performance than the currently available algorithms and can be used for clustering applications.
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