DOI QR코드

DOI QR Code

The Process Reference Model for the Data Quality Management Process Assessment

데이터 품질관리 프로세스 평가를 위한 프로세스 참조모델

  • Kim, Sunho (Department of Industrial and Management Engineering, Myongji University) ;
  • Lee, Changsoo (Department of Industrial, Information and Management Engineering, Gangneung-Wonju National University)
  • Received : 2013.07.05
  • Accepted : 2013.10.10
  • Published : 2013.11.30

Abstract

There are two ways to assess data quality : measurement of data itself and assessment of data quality management process. Recently maturity assessment of data quality management process is used to ensure and certify the data quality level of an organization. Following this trend, the paper presents the process reference model which is needed to assess data quality management process maturity. First, the overview of assessment model for data quality management process maturity is presented. Second, the process reference model that can be used to assess process maturity is proposed. The structure of process reference model and its detail processes are developed based on the process derivation approach, basic principles of data quality management and the basic concept of process reference model in SPICE. Furthermore, characteristics of the proposed model are described compared with ISO 8000-150 processes.

데이터의 품질을 평가하기 위해서 데이터 자체의 품질을 측정하는 방법과 데이터 품질을 관리하는 프로세스를 측정하는 방법이 활용되고 있다. 최근에는 조직의 데이터 품질을 보장 및 인증하기 위해 데이터 품질관리 프로세스의 성숙도를 측정하는 방법을 활용하고 있다. 이러한 추세에 따라 본 논문에서는 데이터 품질관리의 프로세스 성숙도를 평가하는데 필요한 프로세스 참조모델을 제시한다. 우선 데이터 품질관리 프로세스 성숙도 평가 모델의 개요를 제시한다. 그리고, 프로세스 성숙도 평가에 기본이 되는 프로세스 참조모델을 제시한다. 여기서는 프로세스 도출 방안, 데이터 품질관리의 기본 원칙, SPICE 프로세스 참조 모델의 기본 개념을 기초로 하여 프로세스 참조모델의 구성과 세부 프로세스를 개발하였다. 그리고 본 모델의 특징 및 개선점을 ISO 8000-150의 프로세스와 비교하여 설명하였다.

Keywords

References

  1. Kim, S. H., Lee, C. S., "A Master Data Quality Management Framework," Entrue Journal of Information Technology, Vol. 9, No. 2, pp. 109-121, 2010.
  2. Lee, C. S., Kim, S. H., "A Data Quality Management Framework and itʼs Business Scenario for Application," The Journal of Society for e-Business Studies, Vol. 15, No. 4, pp. 79-99, 2010.
  3. CMMI for Acquisition, V.1.3, Carnegie Melllon, Software Engineering Institute, 2010.
  4. CMMI for Development, V.1.3, Carnegie Melllon, Software Engineering Institute, 2010.
  5. CMMI for Services, V.1.3, Carnegie Melllon, Software Engineering Institute, 2010.
  6. Data Documentation Initiative(DDI) Technical Specification, Part I : Overview, Version 3.1, DDI Alliance, 2009.
  7. Federal DAS-Data Quality Framework V1.0, US Federal Data Architecture Subcommittee(DAS), October 1, 2008.
  8. Korea Database Agency, Data quality management maturity model(V1.0), 2006.
  9. IBM, IBM Data Governance Council Maturity Model, 2007.
  10. Caballero, I., Caro, A., Calero, C., Piattini, M., "IQM3 : Information Quality, Management Maturity Model," Journal of Universal Computer Science Vol. 14, No. 22, pp. 3658-3685, 2008.
  11. ISO 8000-1 Data quality-Part1 : Overview, ISO, 2009.
  12. ISO 8000-110 Information quality-Part 110 : Master data quality : Syntax, semantic encoding, and conformance to customer requirements, 2008.
  13. ISO/TS 8000-150 Master data : Quality management framework, ISO, 2011.
  14. ISO 9000, Quality management systems-Fundamentals and vocabulary.
  15. ISO TC211 Geographic Information/Geomatics, www.isotc211.org.
  16. ISO/CD 10303-59 Product data representation and exchange : Integrated generic resource : Quality of product shape data, ISO TC184/SC4/WG12 N4866, 2007.
  17. ISO/IEC 12207 Systems and software engineering- Software life cycle processes, ISO, 2002.
  18. ISO/IEC 15288 System Engineering- System Life Cycle Processes, ISO, 2008.
  19. ISO/IEC 15504-1 Information technology -Process assessment-Part 1 : Concepts and vocabulary, ISO, 2004.
  20. ISO/IEC 25012 Software engineering -- Software product Quality Requirements and Evaluation(SQuaRE) -- Data quality model, ISO, 2008.
  21. ISO/IEC 33000 series http://www.spilab. co.za/iso-standards-watch/33-33000.
  22. ISO/IEC TR 24774, Systems and software engineering-Life cycle management- Guidelines for process description, 2010.
  23. Mielke, M., Gebauer, M., Lussem, Kutsche, R., Infor-mation Quality Management : Principles and Foundations, EIDIQ-SP- 1-2008, EIDIQ, 2008.
  24. Mosley, M., Brackett, M., Earley S., Henderson D., The DAMA Guide to the Data Management Body of Knowledge, DAMA International, 2009.
  25. OASIS Customer Information Quality TC, Customer Information Quality Specifications Version 3.0 : Name(xNL), Address (xAL) and Party(xPIL), Public Review Draft, 2007.
  26. Pipino, L. L., Lee, Y. W., Wang R. Y., "Data quality as-sessment", Communications of the ACM, Vol. 45, No. 4, pp. 211-218, 2002. https://doi.org/10.1145/505248.506010
  27. Ryu, K. S., Park, J. S., Park, J. H., "A data quality management maturity model," ETRI Journal, Vol. 28, No. 2, 2006.

Cited by

  1. MAMD 2.0: Environment for data quality processes implantation based on ISO 8000-6X and ISO/IEC 33000 vol.54, 2017, https://doi.org/10.1016/j.csi.2016.11.008
  2. 공공 빅데이터 개방 및 활용 활성화 방안에 대한 연구 vol.24, pp.3, 2013, https://doi.org/10.22693/niaip.2017.24.3.027
  3. 데이터 기반 경영을 위한 국가R&D API관리시스템의 운영 데이터 활용 가능성 탐색 vol.20, pp.4, 2020, https://doi.org/10.5392/jkca.2020.20.04.014