An Empirical Study on Core Data Asset Identification in Data Governance

IF 3.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Big Data and Cognitive Computing Pub Date : 2023-10-07 DOI:10.3390/bdcc7040161
Yunpeng Chen, Ying Zhao, Wenxuan Xie, Yanbo Zhai, Xin Zhao, Jiang Zhang, Jiang Long, Fangfang Zhou
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Abstract

Data governance aims to optimize the value derived from data assets and effectively mitigate data-related risks. The rapid growth of data assets increases the risk of data breaches. One key solution to reduce this risk is to classify data assets according to their business value and criticality to the enterprises, allocating limited resources to protect core data assets. The existing methods rely on the experience of professionals and cannot identify core data assets across business scenarios. This work conducts an empirical study to address this issue. First, we utilized data lineage graphs with expert-labeled core data assets to investigate the experience of data users on core data asset identification from a scenario perspective. Then, we explored the structural features of core data assets on data lineage graphs from an abstraction perspective. Finally, one expert seminar was conducted to derive a set of universal indicators to identify core data assets by synthesizing the results from the two perspectives. User and field studies were conducted to demonstrate the effectiveness of the indicators.
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数据治理中核心数据资产识别的实证研究
数据治理旨在优化数据资产的价值,并有效降低数据相关风险。数据资产的快速增长增加了数据泄露的风险。降低这种风险的一个关键解决方案是根据数据资产的业务价值和对企业的重要性对其进行分类,分配有限的资源来保护核心数据资产。现有的方法依赖于专业人员的经验,不能跨业务场景识别核心数据资产。本文对这一问题进行了实证研究。首先,我们利用带有专家标记的核心数据资产的数据谱系图,从场景的角度调查数据用户在核心数据资产识别方面的体验。然后,我们从抽象的角度探讨了数据沿袭图上核心数据资产的结构特征。最后,举办了一次专家研讨会,通过综合两个方面的结果,得出一套通用指标,以确定核心数据资产。进行了用户和实地研究,以证明这些指标的有效性。
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来源期刊
Big Data and Cognitive Computing
Big Data and Cognitive Computing Business, Management and Accounting-Management Information Systems
CiteScore
7.10
自引率
8.10%
发文量
128
审稿时长
11 weeks
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