Rider Chaotic Biography Optimization-driven Deep Stacked Auto-encoder for Big Data Classification Using Spark Architecture: Rider Chaotic Biography Optimization

IF 0.8 4区 计算机科学 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS International Journal of Web Services Research Pub Date : 2021-01-01 DOI:10.4018/ijwsr.2021070103
A. Brahmane, C. Krishna
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引用次数: 5

Abstract

The novelty in big data is rising day-by-day in such a way that the existing software tools face difficulty in supervision of big data. Furthermore, the rate of the imbalanced data in the huge datasets is a key constraint to the research industry. Thus, this paper proposes a novel technique for handling the big data using Spark framework. The proposed technique undergoes two steps for classifying the big data, which involves feature selection and classification, which is performed in the initial nodes of Spark architecture. The proposed optimization algorithm is named rider chaotic biography optimization (RCBO) algorithm, which is the integration of the rider optimization algorithm (ROA) and the standard chaotic biogeography-based optimisation (CBBO). The proposed RCBO deep-stacked auto-encoder using Spark framework effectively handles the big data for attaining effective big data classification. Here, the proposed RCBO is employed for selecting suitable features from the massive dataset.
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骑手混沌传记优化驱动的深度堆叠自编码器的大数据分类使用Spark架构:骑手混沌传记优化
大数据的新颖性与日俱增,使得现有的软件工具在对大数据的监管上面临困难。此外,在庞大的数据集中,不平衡数据的比率是研究行业的一个关键制约因素。因此,本文提出了一种利用Spark框架处理大数据的新技术。该方法对大数据进行分类,分为特征选择和分类两步,分类在Spark架构的初始节点上进行。所提出的优化算法被命名为骑手混沌生物地理优化算法(RCBO),它是骑手优化算法(ROA)和标准混沌生物地理优化(CBBO)的集成。提出的基于Spark框架的RCBO深度堆叠自编码器可以有效地处理大数据,实现有效的大数据分类。在这里,提出的RCBO用于从海量数据集中选择合适的特征。
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来源期刊
International Journal of Web Services Research
International Journal of Web Services Research 工程技术-计算机:软件工程
CiteScore
2.40
自引率
0.00%
发文量
19
审稿时长
>12 weeks
期刊介绍: The International Journal of Web Services Research (IJWSR) is the first refereed, international publication featuring the latest research findings and industry solutions involving all aspects of Web services technology. This journal covers advancements, standards, and practices of Web services, as well as identifies emerging research topics and defines the future of Web services on grid computing, multimedia, and communication. IJWSR provides an open, formal publication for high quality articles developed by theoreticians, educators, developers, researchers, and practitioners for those desiring to stay abreast of challenges in Web services technology.
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