首页> 外文期刊>Journal of intelligent & fuzzy systems: Applications in Engineering and Technology >A quantitative and text-based characterization of big data research
【24h】

A quantitative and text-based characterization of big data research

机译:基于大数据研究的定量和文本表征

获取原文
获取原文并翻译 | 示例
获取外文期刊封面目录资料

摘要

This paper tries to map the research work carried out in the field of Big Data through a detailed analysis of scholarly articles published on the theme during 2010-16, as indexed in Scopus. We have collected and analyzed all relevant publications on Big Data, as indexed in Scopus, through a quantitative as well as textual characterization. The analysis attempts to dwell into parameters like research productivity, growth of research and citations, thematic trends, top publication sources and emerging topics in this field. The analytical study also investigates country-wise publications output and impact in terms of average citations per paper, country-level collaboration patterns, authorship and leading contributors (countries, institutions) etc. The scholarly publication data is also subjected to a detailed textual analysis method to identify key themes in Big Data research, disciplinary variations and thematic trends and patterns. The results produce interesting inferences. Quantitative measures show that there has been a tremendous increase in number of publications related to Big Data during last few years. Research work in Big Data, though primarily considered a sub-discipline of Computer Science, is now carried out by researchers in many disciplines. Thematic analysis of publications in Big Data show that it's a discipline involving research interest from fields as diverse as Medicine to Social Sciences. The paper also identifies major keywords now associated with Big Data research such as Cloud Computing, Deep Learning, Social Media and Data Analytics. This helps in a thorough understanding and visualization of the Big Data research area.
机译:本文通过详细分析2010-16期间在Scopus索引的索引中,通过详细分析来映射大数据领域的研究工作。通过定量和文本表征,我们收集并分析了大数据上的所有相关出版物,如在Scopus中索引。分析试图将参数纳入研究生产力,研究和引用的增长,专题趋势,最高出版资源和新兴主题。分析研究还调查了每个论文的平均印度的国家明智的出版物和影响,国家一级的协作模式,作者构和主要贡献者(国家,机构)等。学术出版物还经过详细的文本分析方法确定大数据研究,纪律变化和专题趋势和模式的关键主题。结果产生了有趣的推论。定量措施表明,在过去几年中,与大数据相关的出版物数量巨大增加。大数据的研究工作,但主要被认为是计算机科学的子学科,现在由许多学科的研究人员进行。大数据中出版物的专题分析表明,这是一个涉及从田地的研究兴趣的纪律作为社会科学的药物。本文还确定了现在与大数据研究相关的主要关键词,例如云计算,深度学习,社交媒体和数据分析。这有助于彻底了解和可视化大数据研究区域。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号