A Hybrid Feature Selection Method for Effective Data Classification in Data Mining Applications

IF 0.6 Q4 COMPUTER SCIENCE, THEORY & METHODS International Journal of Grid and High Performance Computing Pub Date : 2019-01-01 DOI:10.4018/IJGHPC.2019010101
Ilangovan Sangaiya, A. V. A. Kumar
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引用次数: 1

Abstract

In data mining, people require feature selection to select relevant features and to remove unimportant irrelevant features from a original data set based on some evolution criteria. Filter and wrapper are the two methods used but here the authors have proposed a hybrid feature selection method to take advantage of both methods. The proposed method uses symmetrical uncertainty and genetic algorithms for selecting the optimal feature subset. This has been done so as to improve processing time by reducing the dimension of the data set without compromising the classification accuracy. This proposed hybrid algorithm is much faster and scales well to the data set in terms of selected features, classification accuracy and running time than most existing algorithms.
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数据挖掘应用中有效数据分类的混合特征选择方法
在数据挖掘中,人们需要特征选择,根据一定的演化准则从原始数据集中选择出相关的特征,并去除不重要的不相关的特征。过滤器和包装器是常用的两种方法,但在这里,作者提出了一种混合的特征选择方法来利用这两种方法。该方法采用对称不确定性和遗传算法选择最优特征子集。这样做是为了在不影响分类精度的情况下通过减少数据集的维数来改善处理时间。本文提出的混合算法在特征选择、分类精度和运行时间方面都比大多数现有算法具有更高的速度和对数据集的扩展性。
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来源期刊
CiteScore
1.70
自引率
10.00%
发文量
24
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