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Systematic survey on evolution of machine learning for big data

机译:大数据的机器学习演变的系统调查

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Advanced data processing techniques with massive and high dimensional data, dramatically increased storage capability and complex data formats cause the Big data. In this realm, to solve the various issues of computational time to extract the valuable information without sensitive information loss, the Big data need modern advanced technologies and/or techniques. To overcome those problems, a novel and rapidly expanding research domain have been recently proposed: Machine Learning. Generally Machine learning algorithms have been considered to learn and find useful and valuable information from large volumes of data. The goal of this paper is to build the effective universal architecture which defines the quality and durability of a system software. The paper intends to add to the Systematic Literature Review (SLR) to help specialists who are endeavoring to contribute around there. The principle target of this audit is to deliberately recognize and dissect the as of late distributed research subjects identified with Machine learning in big data as to research action, utilized apparatuses and systems, proposed methodologies and spaces. The connected strategy in SLR depends on three chose electronic databases proposed by (Kitchenham and Charters, 2007).
机译:具有大规模和高维数据的高级数据处理技术,显着增加了存储能力和复杂的数据格式,导致大数据。在这个领域中,为了解决计算时间的各种问题来提取有价值的信息而不敏感信息丢失,大数据需要现代的先进技术和/或技术。为了克服这些问题,最近提出了一种新颖且迅速扩张的研究领域:机器学习。通常,已经考虑了机器学习算法从大量数据中学习和找到有用和有价值的信息。本文的目标是建立有效的通用架构,该架构定义了系统软件的质量和耐用性。本文打算加入系统文献综述(SLR),以帮助努力在那里提供贡献的专家。本审计的原则目标是故意识别并将其解剖为在大数据中识别的机器学习的后期分布式研究主题,以研究行动,利用设备和系统,提出的方法和空间。 SLR中的连接策略取决于(Kitchenham和Charters,2007)提出的三个选择电子数据库。

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