...
首页> 外文期刊>Decision support systems >Can big data improve firm decision quality? The role of data quality and data diagnosticity
【24h】

Can big data improve firm decision quality? The role of data quality and data diagnosticity

机译:大数据可以提高坚实的决策质量吗?数据质量和数据诊断的作用

获取原文
获取原文并翻译 | 示例

摘要

Anecdotal evidence suggests that, despite the large variety of data, the huge volume of generated data, and the fast velocity of obtaining data (i.e., big data), quality of big data is far from perfect. Therefore, many firms defer collecting and integrating big data as they have concerns regarding the impact of utilizing big data on data diagnosticity (i.e., retrieval of valuable information from data) and firm decision making quality. In this study, we use the Organizational Learning Theory and Wang and Strong's data quality framework to explore the impact of processing big data on firm decision quality and the mediating role of data quality (DQ) and data diagnosticity on this relationship. We validate the proposed research model using survey data from 130 firms, obtained from data analysts and IT managers. Results confirm the critical role of DQ in increasing data diagnosticity and improving firm decision quality when processing big data; suggesting important implications for practice and theory. Findings also reveal that while big data utilization positively impacts contextual DQ, accessibility DQ, and representational DQ, interestingly, it negatively impacts intrinsic DQ. Furthermore, findings show that while intrinsic DQ, contextual DQ, and representational DQ significantly increase data diagnosticity, accessibility DQ does not influence it. Most importantly, the findings show that big data utilization does not significantly impact the quality of firm decisions and it is fully mediated through DQ and data diagnosticity. The results of this study contribute to practice by providing important guidelines for managers to improve firm decision quality through the use of big data.
机译:轶事证据表明,尽管数据有很大的数据,所产生的数据量大,以及获得数据的快速速度(即,大数据),大数据的质量远非完美。因此,许多公司推迟收集和整合大数据,因为他们对利用大数据的影响数据诊断(即,从数据的有价值信息检索)和坚定的决策质量。在这项研究中,我们使用组织学习理论和王和强大的数据质量框架来探索加工大数据对坚实的决策质量和数据质量(DQ)和数据诊断的中介作用对这种关系的影响。我们使用从数据分析师和IT经理获得的130家公司的调查数据验证所提出的研究模式。结果确认DQ在加工大数据时提高数据诊断和提高公司判定质量的关键作用;建议对实践和理论的重要意义。调查结果还揭示了有趣的是,虽然大数据利用积极影响上下文DQ,可访问性DQ和代表性DQ,但它对内在DQ产生负面影响。此外,调查结果表明,虽然内在DQ,Contexual DQ和代表性DQ显着提高了数据诊断性,但可访问性DQ不会影响它。最重要的是,研究结果表明,大数据利用率不会显着影响公司决策的质量,并通过DQ和数据诊断完全介导。本研究的结果通过提供管理者通过使用大数据来提高管理人员来提高坚实决策质量的重要准则。

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