Master data definition and the privacy classification in government agencies: Case studies of local government

The Master Data Management (MDM) empowers government agencies to consolidate and integrate multiple master data sources to a single source of truth. With MDM, the master data from different agencies that are valuable across agencies, applications and services will be identified and managed in a cent...

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Main Authors: Haneem, F., Kama, N., Azmi, A., Azizan, A., Sam, S. M., Yusop, O., Abas, H.
Format: Article
Published: American Scientific Publishers 2017
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Online Access:http://eprints.utm.my/id/eprint/75280/
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85027857346&doi=10.1166%2fasl.2017.7317&partnerID=40&md5=6337e5a312ee67031972ed77b08dfd2f
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spelling my.utm.752802018-03-27T06:08:51Z http://eprints.utm.my/id/eprint/75280/ Master data definition and the privacy classification in government agencies: Case studies of local government Haneem, F. Kama, N. Azmi, A. Azizan, A. Sam, S. M. Yusop, O. Abas, H. HD30.2 Knowledge management HD30.213 Management information systems. Decision support systems The Master Data Management (MDM) empowers government agencies to consolidate and integrate multiple master data sources to a single source of truth. With MDM, the master data from different agencies that are valuable across agencies, applications and services will be identified and managed in a central repository as a high quality enterprise master data. However, the MDM establishment usually hindered by a data policy where most of the government agencies are reluctant to share their master data due to widespread privacy concerns. Hence, this study aims to define master data and its privacy classification in each government agencies by using a qualitative and quantitative data analysis approach. It involves participative case studies from seven (7) Malaysia’s local government agencies. The study identifies 36 sets of master data which generally grouped into three domains which are; (1) customers’ profile, (2) services and products, and (3) service providers’ profile. From these master datasets, 20 datasets (56%) are classified as open data. The result indicates that the government agency has a high potential to share these open master data to the centralized MDM platform with no worry of the privacy issues. This study presents a significant contribution to the MDM research area by clarifying master data definition and its privacy classification in government agencies. American Scientific Publishers 2017 Article PeerReviewed Haneem, F. and Kama, N. and Azmi, A. and Azizan, A. and Sam, S. M. and Yusop, O. and Abas, H. (2017) Master data definition and the privacy classification in government agencies: Case studies of local government. Advanced Science Letters, 23 (6). pp. 5094-5097. ISSN 1936-6612 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85027857346&doi=10.1166%2fasl.2017.7317&partnerID=40&md5=6337e5a312ee67031972ed77b08dfd2f DOI:10.1166/asl.2017.7317
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
topic HD30.2 Knowledge management
HD30.213 Management information systems. Decision support systems
spellingShingle HD30.2 Knowledge management
HD30.213 Management information systems. Decision support systems
Haneem, F.
Kama, N.
Azmi, A.
Azizan, A.
Sam, S. M.
Yusop, O.
Abas, H.
Master data definition and the privacy classification in government agencies: Case studies of local government
description The Master Data Management (MDM) empowers government agencies to consolidate and integrate multiple master data sources to a single source of truth. With MDM, the master data from different agencies that are valuable across agencies, applications and services will be identified and managed in a central repository as a high quality enterprise master data. However, the MDM establishment usually hindered by a data policy where most of the government agencies are reluctant to share their master data due to widespread privacy concerns. Hence, this study aims to define master data and its privacy classification in each government agencies by using a qualitative and quantitative data analysis approach. It involves participative case studies from seven (7) Malaysia’s local government agencies. The study identifies 36 sets of master data which generally grouped into three domains which are; (1) customers’ profile, (2) services and products, and (3) service providers’ profile. From these master datasets, 20 datasets (56%) are classified as open data. The result indicates that the government agency has a high potential to share these open master data to the centralized MDM platform with no worry of the privacy issues. This study presents a significant contribution to the MDM research area by clarifying master data definition and its privacy classification in government agencies.
format Article
author Haneem, F.
Kama, N.
Azmi, A.
Azizan, A.
Sam, S. M.
Yusop, O.
Abas, H.
author_facet Haneem, F.
Kama, N.
Azmi, A.
Azizan, A.
Sam, S. M.
Yusop, O.
Abas, H.
author_sort Haneem, F.
title Master data definition and the privacy classification in government agencies: Case studies of local government
title_short Master data definition and the privacy classification in government agencies: Case studies of local government
title_full Master data definition and the privacy classification in government agencies: Case studies of local government
title_fullStr Master data definition and the privacy classification in government agencies: Case studies of local government
title_full_unstemmed Master data definition and the privacy classification in government agencies: Case studies of local government
title_sort master data definition and the privacy classification in government agencies: case studies of local government
publisher American Scientific Publishers
publishDate 2017
url http://eprints.utm.my/id/eprint/75280/
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85027857346&doi=10.1166%2fasl.2017.7317&partnerID=40&md5=6337e5a312ee67031972ed77b08dfd2f
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score 13.18916