A Novel Granularity Optimal Feature Selection based on Multi-Variant Clustering for High Dimensional Data

Q4 Materials Science
SRINIVAS KOLLI, M. Sreedevi
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引用次数: 7

Abstract

Clustering is the most complex in multi/high dimensional data because of sub feature selection fromoverall features present in categorical data sources. Sub set feature be the aggressive approach to decreasefeature dimensionality in mining of data, identification of patterns. Main aim behind selection of feature withrespect to selection of optimal feature and decrease the redundancy. In-order to compute withredundant/irrelevant features in high dimensional sample data exploration based on feature selection calculationwith data granular described in this document. Propose aNovel Granular Feature Multi-variant Clustering basedGenetic Algorithm (NGFMCGA) model to evaluate the performance results in this implementation. This modelmain consists two phases, in first phase, based on theoretic graph grouping procedure divide features intodifferent clusters, in second phase, select strongly representative related feature from each cluster with respectto matching of subset of features. Features present in this concept are independent because of features selectfrom different clusters, proposed approach clustering have high probability in processing and increasing thequality of independent and useful features.Optimal subset feature selection improves accuracy of clustering andfeature classification, performance of proposed approach describes better accuracy with respect to optimalsubset selection is applied on publicly related data sets and it is compared with traditional supervisedevolutionary approaches.
基于多变量聚类的高维数据粒度最优特征选择
聚类在多维/高维数据中是最复杂的,因为从分类数据源中存在的总体特征中选择子特征。子集特征是数据挖掘、模式识别中降低特征维数的有效方法。特征选择的主要目的是选择最优特征,减少冗余。为了在高维样本数据探索中进行冗余/不相关特征的计算,本文介绍了基于数据粒度的特征选择计算。提出了一种新的基于颗粒特征多变量聚类的遗传算法(NGFMCGA)模型来评估该实现中的性能结果。该模型主要分为两个阶段,第一阶段,根据理论图分组过程将特征划分到不同的聚类中,第二阶段,根据特征子集的匹配,从每个聚类中选择具有较强代表性的相关特征。该概念中存在的特征是独立的,因为特征是从不同的聚类中选择的,所提出的聚类方法在处理和提高独立有用特征的质量方面具有很高的概率。最优子集特征选择提高了聚类和特征分类的准确性,将最优子集选择应用于公开相关数据集,并与传统的监督进化方法进行了比较。
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来源期刊
Solid State Technology
Solid State Technology 工程技术-工程:电子与电气
CiteScore
0.30
自引率
0.00%
发文量
0
审稿时长
>12 weeks
期刊介绍: Information not localized
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