An Efficient Feature Subset Selection with Fuzzy Wavelet Neural Network for Data Mining in Big Data Environment

Q2 Computer Science
Varshavardhini S
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引用次数: 1

Abstract

Big data refers to the massive quality of data being generated at a drastic speed from various heterogeneous sources namely social media, mobile devices, internet transactions, networked devices, and sensors. Several data mining (DM) and machine learning (ML) models have been presented for the extraction of knowledge from Big Data. Since the big datasets include numerous features, feature selection techniques are essential to eliminate unwanted and unrelated features which degrade the classification efficiency. The adoption of DM tools for big data environments necessitates remodeling the algorithm. In this aspect, this paper presents an intelligent feature subset selection with fuzzy wavelet neural network (FSS-FWNN) for big data classification. The FSS-FWNN technique incorporates Hadoop Ecosystem tool for handling big data in an effectual way. Besides, the FSS-FWNN technique involves three processes namely preprocessing, feature selection, and classification. In addition, quasi-oppositional chicken swarm optimization (QOCSO) technique is employed for the feature selection process and the FWNN technique is applied for the classification process. The design of QOCSO algorithm as an FS technique for big data classification shows the novelty of the work and the feature subset selection process considerably enhances the classification performance. An extensive set of simulations is carried out and the results are reviewed in terms of several evaluation factors in order to analyse the improvement of the FSS-FWNN approach. The experimental findings demonstrated that the FSS-FWNN approach outperformed the most current algorithms.
基于模糊小波神经网络的大数据挖掘特征子集选择
大数据是指从各种异构来源(社交媒体、移动设备、互联网交易、联网设备和传感器)以极快的速度产生的海量数据。为了从大数据中提取知识,已经提出了几种数据挖掘(DM)和机器学习(ML)模型。由于大数据集包含大量的特征,特征选择技术对于消除不需要的和不相关的特征是必不可少的,这些特征会降低分类效率。在大数据环境中采用DM工具需要对算法进行重构。在这方面,本文提出了一种基于模糊小波神经网络(FSS-FWNN)的大数据分类智能特征子集选择方法。FSS-FWNN技术结合Hadoop生态系统工具,有效处理大数据。此外,FSS-FWNN技术涉及预处理、特征选择和分类三个过程。此外,在特征选择过程中采用准对立鸡群优化(QOCSO)技术,在分类过程中采用FWNN技术。QOCSO算法作为一种FS技术用于大数据分类的设计,显示了工作的新颖性,特征子集选择过程大大提高了分类性能。为了分析FSS-FWNN方法的改进,进行了一系列广泛的模拟,并根据几个评估因素对结果进行了审查。实验结果表明,FSS-FWNN方法优于目前大多数算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Internet Services and Information Security
Journal of Internet Services and Information Security Computer Science-Computer Science (miscellaneous)
CiteScore
3.90
自引率
0.00%
发文量
0
审稿时长
8 weeks
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