Improving Data Quality and Data Governance Using Master Data Management: A Review

Sanny Hikmawati, P. Santosa, Indriana Hidayah
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引用次数: 3

Abstract

Master data management (MDM) is a method of maintaining, integrating, and harmonizing master data to ensure consistent system information. The primary function of MDM is to control master data to keep it consistent, accurate, current, relevant, and contextual to meet different business needs across applications and divisions. MDM also affects data governance, which is related to establishing organizational actors’ roles, functions, and responsibilities in maintaining data quality. Poor management of master data can lead to inaccurate and incomplete data, leading to lousy stakeholder decision-making. This article is a literature review that aims to determine how MDM improves the data quality and data governance and assess the success of MDM implementation. The review results show that MDM can overcome data quality problems through the MDM process caused by data originating from various scattered sources. MDM encourages organizations to improve data management by adjusting the roles and responsibilities of business actors and information technology (IT) staff documented through data governance. Assessment of the success of MDM implementation can be carried out by organizations to improve data quality and data governance by following the existing framework.
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利用主数据管理提高数据质量和数据治理:综述
主数据管理(MDM)是一种维护、集成和协调主数据以确保系统信息一致的方法。MDM的主要功能是控制主数据,使其保持一致、准确、最新、相关和上下文相关,从而满足跨应用程序和部门的不同业务需求。MDM还影响数据治理,这与建立组织参与者在维护数据质量方面的角色、功能和职责有关。主数据管理不善可能导致数据不准确和不完整,从而导致糟糕的利益相关者决策。本文是一篇文献综述,旨在确定MDM如何改善数据质量和数据治理,并评估MDM实现的成功。综述结果表明,MDM可以通过MDM过程克服由于数据来源分散而导致的数据质量问题。MDM鼓励组织通过调整通过数据治理记录的业务参与者和信息技术(IT)人员的角色和职责来改进数据管理。组织可以通过遵循现有框架来评估MDM实现的成功,从而改进数据质量和数据治理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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