Aggregation and multidimensional analysis of big data for large-scale scientific applications: models, issues, analytics, and beyond

A. Cuzzocrea
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引用次数: 16

Abstract

Aggregation and multidimensional analysis are well-known powerful tools for extracting useful knowledge, shaped in a summarized manner, which are being successfully applied to the annoying problem of managing and mining big data produced by large-scale scientific applications. Indeed, in the context of big data analytics, aggregation approaches allow us to provide meaningful descriptions of these data, otherwise impossible for alternative data-intensive analysis tools. On the other hand, multidimensional analysis methodologies introduce fortunate metaphors that significantly empathize the knowledge discovery phase from such huge amounts of data. Following this main trend, several big data aggregation and multidimensional analysis approaches have been proposed recently. The goal of this paper is to (i) provide a comprehensive overview of state-of-the-art techniques and (ii) depict open research challenges and future directions adhering to the reference scientific field.
面向大规模科学应用的大数据聚合和多维分析:模型、问题、分析等
聚合和多维分析是众所周知的提取有用知识的强大工具,它们以总结的方式形成,并成功地应用于管理和挖掘大规模科学应用产生的大数据的恼人问题。事实上,在大数据分析的背景下,聚合方法允许我们对这些数据提供有意义的描述,否则替代数据密集型分析工具是不可能的。另一方面,多维分析方法引入了幸运的隐喻,从如此大量的数据中显著地同情知识发现阶段。在这一主要趋势下,最近提出了几种大数据聚合和多维分析方法。本文的目标是(i)提供最新技术的全面概述,(ii)描述开放的研究挑战和坚持参考科学领域的未来方向。
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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