【24h】

The costs of poor data quality

机译:数据质量差的代价

获取原文
           

摘要

Purpose: The technological developments have implied that companies store increasingly more data. However, data quality maintenance work is often neglected, and poor quality business data constitute a significant cost factor for many companies. This paper argues that perfect data quality should not be the goal, but instead the data quality should be improved to only a certain level. The paper focuses on how to identify the optimal data quality level.Design/methodology/approach: The paper starts with a review of data quality literature. On this basis, the paper proposes a definition of the optimal data maintenance effort and a classification of costs inflicted by poor quality data. These propositions are investigated by a case study.Findings: The paper proposes: (1) a definition of the optimal data maintenance effort and (2) a classification of costs inflicted by poor quality data. A case study illustrates the usefulness of these propositions.Research limitations/implications: The paper provides definitions in relation to the costs of poor quality data and the data quality maintenance effort. Future research may build on these definitions. To further develop the contributions of the paper, more studies are needed.? ?Practical implications: As illustrated by the case study, the definitions provided by this paper can be used for determining the right data maintenance effort and costs inflicted by poor quality data. In many companies, such insights may lead to significant savings.Originality/value: The paper provides a clarification of what are the costs of poor quality data and defines the relation to data quality maintenance effort. This represents an original contribution of value to future research and practice.
机译:目的:技术的发展意味着公司存储越来越多的数据。但是,数据质量维护工作通常被忽略,而质量差的业务数据对许多公司而言是重要的成本因素。本文认为,完美的数据质量不应成为目标,而应仅将数据质量提高到一定水平。本文着重于如何确定最佳数据质量水平。设计/方法/方法:本文首先回顾了数据质量文献。在此基础上,本文提出了最佳数据维护工作的定义,并对不良质量数据造成的成本进行了分类。通过一个案例研究对这些建议进行了研究。发现:本文提出:(1)最佳数据维护工作的定义,以及(2)质量较差的数据造成的成本分类。案例研究说明了这些命题的有用性。研究局限/含义:本文提供了有关劣质数据成本和数据质量维护工作的定义。未来的研究可能会基于这些定义。为了进一步发展本文的贡献,需要进行更多的研究。实用意义:如案例研究所示,本文提供的定义可用于确定正确的数据维护工作以及不良质量数据造成的成本。在许多公司中,这样的洞察力可能会节省大量费用。原始数据/价值:本文提供了劣质数据成本的澄清,并定义了与数据质量维护工作的关系。这代表了价值对未来研究和实践的原始贡献。

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