首页> 外文期刊>Journal of High Technology Management Research >Big data and Smart data: two interdependent and synergistic digital policies within a virtuous data exploitation loop
【24h】

Big data and Smart data: two interdependent and synergistic digital policies within a virtuous data exploitation loop

机译:大数据和智能数据:在良性数据剥削循环中两个相互依存和协同数字策略

获取原文
获取原文并翻译 | 示例
           

摘要

This research examines for the first time the relationship between Big data and Smart data among French automotive distributors. Many low-tech firms engage in these data policies to improve their decisions and performance through the predictive capacities of their data. A discussion emerges in the literature according to which an effective policy lies in the conversion of a mass of raw data into so-called intelligent data. In order to understand better this digital transition, we question the transformation of data policies practiced in low-tech firms through the founding model of 3Vs (Volume, Variety and Velocity of data). First of all, this empirical study of 112 French automotive distributors develops the existing literature by proposing an original and detailed typology of the data policies practiced (Low data, Big data and Smart data). Secondly, after specifying the elements of the differences between the quantitative nature of Big data and the qualitative nature of Smart data, our results reveal and analyse for the first time the existence of their synergistic relationship. Companies transform their Big data approach into Smart data when they move from massive exploitation to intelligent exploitation of their data. The phenomenon is part of a high-end loop data exploitation. Initially, the exploitation of intelligent data can only be done by extracting a sample from a large raw data pool previously made by a Big data policy. Secondly, the organization's raw data pool is in turn enriched by the repayment of contributions made by the Smart data approach. Thus, this study develops three important ways. First off, we identify, detail and compare the current data policies of a traditional industry. Secondly, we reveal and explain the evolution of digital practices within organizations that now combine both quantitative and qualitative data exploitation. Finally, our results guide decision-makers towards the synergistic and the legitimate association of different forms of data management for better performance.
机译:这项研究首次审查了法国汽车经销商之间的大数据与智能数据之间的关系。许多低技术公司从事这些数据策略,通过数据的预测能力来改善他们的决策和性能。文献中出现了讨论,根据该文献中的有效政策在于将大量原始数据转换为所谓的智能数据。为了了解更好的这种数字转型,我们质疑通过创建3Vs(卷,数据的速度)的成立模型来解决低科技公司中的数据策略的转型。首先,通过提出实践的数据策略的原始和详细的类型(低数据,大数据和智能数据),这项对112家法国汽车经销商的实证研究开发了现有文献。其次,在指定大数据的定量性质与智能数据的定性性质之间的差异之后,我们的结果首次存在协同关系的第一次揭示和分析。当他们从大规模开发到智能开发数据时,公司将大数据方法转换为智能数据。该现象是高端循环数据剥削的一部分。最初,智能数据的开发只能通过从先前由大数据策略提取的大型原始数据池中提取样本来完成。其次,本组织的原始数据池又通过偿还智能数据方法所取得的贡献而富有丰富。因此,这项研究发展了三种重要方式。首先,我们识别,详细说明和比较传统行业的当前数据策略。其次,我们揭示并解释了现在结合定量和定性数据剥削的组织内数字实践的演变。最后,我们的结果指导决策者朝着协同作用和不同形式的数据管理协会,以便更好的性能。

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