【24h】

A Semiotic Approach to Data Quality

机译:数据质量的符号学方法

获取原文

摘要

Since the introduction of the ER-language in the late seventies, data modeling has been an important aspect of information systems development. The quality of data models has been investigated since the mid-nineties. In another strand of research, data and information quality has been investigated even longer. Data can also be looked upon as a type of model (on the instance level), as illustrated e.g. in the product models in CAD-systems. In this paper we present a specialization of a general framework for assessing quality of models to be able to evaluate the combined quality of data models and data. A practical application of the framework from assessing the potential quality of different data sources to be used in a collaborative work environment is used for illustrating the usefulness of the framework. We find on the one hand that the traditional properties of data quality and data model quality is subsumed by the generic SEQUAL-framework, and that there are aspects in this framework that are not covered by the existing work on data and data model quality. On the other hand, the comparison has resulted in a useful deepening of the generic framework for data quality, and has in this way improved the practical applicability of the SEQUAL-framework when applied to discussing and assessing data quality.
机译:自七十年代后期引入ER语言以来,数据建模一直是信息系统开发的一个重要方面。自九十年代以来,已经调查了数据模型的质量。在另一条研究中,数据和信息质量也得到了更长时间。还可以看出数据作为模型(在实例级别)中,如图所示。在CAD系统中的产品模型中。在本文中,我们介绍了一般框架,用于评估模型质量,以便能够评估数据模型和数据的组合质量。框架的实际应用评估在协作工作环境中用于使用的不同数据源的潜在质量用于说明框架的有用性。我们发现,一方面,数据质量和数据模型质量的传统属性被通用序列框架归类,并且该框架存在方面,这些框架未被现有的数据和数据模型质量的工作所涵盖。另一方面,比较导致了用于数据质量的通用框架的有用深化,并以这种方式改善了序列框架的实际适用性,当应用于讨论和评估数据质量时。

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