首页> 外文会议> >Quantitative Comparison of Big Data Analytics and Business Intelligence Project Success Factors
【24h】

Quantitative Comparison of Big Data Analytics and Business Intelligence Project Success Factors

机译:大数据分析和商业智能项目成功因素的定量比较

获取原文

摘要

Decision support systems such as big data, business intelligence (BI), and analytics offer firms capabilities to generate new revenue sources, increase productivity and outputs, and gain strategic benefits. However, the field i.s crowded with terminology that makes it difficult to establish reasonable project scopes and to staff and manage projects. This study clarifies the terminology around data science, computational social science, big data, business intelligence, and analytics, and defines decision support projects. The study uses quantitative methods to empirically classify the project scopes, investigate the similarities and differences between the project types, and identify the critical success factors. The results suggest BI and big data analytics projects are differentiated based on analytics competence, proprietary algorithms, and distinctive business processes. They are significantly different for 19 of the 52 items evaluated. For big data analytics projects, many of the items are correlated with strategic benefits, while for BI projects they are associated with the operational benefits of cost and revenue performance. Project complexity is driven by the project characteristics for BI projects, while the external market drives the complexity of big data analytics projects. These results should inform project sponsors and project managers of the contingency factors to consider when preparing project plans.
机译:大数据,商业智能(BI)和分析等决策支持系统为公司提供了产生新收入来源,提高生产率和产出并获得战略利益的能力。但是,该领域拥挤的术语使建立合理的项目范围以及人员配备和管理项目变得困难。这项研究阐明了围绕数据科学,计算社会科学,大数据,商业智能和分析的术语,并定义了决策支持项目。该研究使用定量方法对项目范围进行了经验分类,调查了项目类型之间的异同,并确定了关键的成功因素。结果表明,BI和大数据分析项目基于分析能力,专有算法和独特的业务流程而有所区别。在评估的52个项目中,有19个显着不同。对于大数据分析项目,许多项目与战略收益相关,而对于BI项目,它们与成本和收益绩效的运营收益相关。 BI项目的项目特征决定了项目的复杂性,而外部市场则驱动了大数据分析项目的复杂性。这些结果应使项目发起人和项目经理了解在制定项目计划时应考虑的意外因素。

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