scispace - formally typeset
Search or ask a question
Topic

Data governance

About: Data governance is a research topic. Over the lifetime, 1738 publications have been published within this topic receiving 26013 citations. The topic is also known as: data goverment.


Papers
More filters
Journal ArticleDOI
TL;DR: Using this framework, IS managers were able to better understand and meet their data consumers' data quality needs and this research provides a basis for future studies that measure data quality along the dimensions of this framework.
Abstract: Poor data quality (DQ) can have substantial social and economic impacts. Although firms are improving data quality with practical approaches and tools, their improvement efforts tend to focus narrowly on accuracy. We believe that data consumers have a much broader data quality conceptualization than IS professionals realize. The purpose of this paper is to develop a framework that captures the aspects of data quality that are important to data consumers.A two-stage survey and a two-phase sorting study were conducted to develop a hierarchical framework for organizing data quality dimensions. This framework captures dimensions of data quality that are important to data consumers. Intrinsic DQ denotes that data have quality in their own right. Contextual DQ highlights the requirement that data quality must be considered within the context of the task at hand. Representational DQ and accessibility DQ emphasize the importance of the role of systems. These findings are consistent with our understanding that high-quality data should be intrinsically good, contextually appropriate for the task, clearly represented, and accessible to the data consumer.Our framework has been used effectively in industry and government. Using this framework, IS managers were able to better understand and meet their data consumers' data quality needs. The salient feature of this research study is that quality attributes of data are collected from data consumers instead of being defined theoretically or based on researchers' experience. Although exploratory, this research provides a basis for future studies that measure data quality along the dimensions of this framework.

4,069 citations

Journal ArticleDOI
TL;DR: The proposed MeDShare system is blockchain-based and provides data provenance, auditing, and control for shared medical data in cloud repositories among big data entities and employs smart contracts and an access control mechanism to effectively track the behavior of the data.
Abstract: The dissemination of patients’ medical records results in diverse risks to patients’ privacy as malicious activities on these records cause severe damage to the reputation, finances, and so on of all parties related directly or indirectly to the data. Current methods to effectively manage and protect medical records have been proved to be insufficient. In this paper, we propose MeDShare, a system that addresses the issue of medical data sharing among medical big data custodians in a trust-less environment. The system is blockchain-based and provides data provenance, auditing, and control for shared medical data in cloud repositories among big data entities. MeDShare monitors entities that access data for malicious use from a data custodian system. In MeDShare, data transitions and sharing from one entity to the other, along with all actions performed on the MeDShare system, are recorded in a tamper-proof manner. The design employs smart contracts and an access control mechanism to effectively track the behavior of the data and revoke access to offending entities on detection of violation of permissions on data. The performance of MeDShare is comparable to current cutting edge solutions to data sharing among cloud service providers. By implementing MeDShare, cloud service providers and other data guardians will be able to achieve data provenance and auditing while sharing medical data with entities such as research and medical institutions with minimal risk to data privacy.

819 citations

Book
01 Jan 1997
TL;DR: This comprehensive book provides business leaders, process owners, and information professionals with the background and methods necessary to set up a data quality program, make and sustain order of magnitude improvements, and create a unique and important business advantage.
Abstract: From the Publisher: Written by the inventor of many modern techniques for data quality, this comprehensive book provides business leaders, process owners, and information professionals with the background and methods necessary to set up a data quality program, make and sustain order of magnitude improvements, and create a unique and important business advantage.

743 citations

Journal ArticleDOI
TL;DR: The data quality problem in the context of supply chain management (SCM) is introduced and methods for monitoring and controlling data quality are proposed and highlighted.

652 citations

Journal ArticleDOI
TL;DR: The data characteristics of the big data environment are analyzed, quality challenges faced by big data are presented, and a hierarchical data quality framework is formulates from the perspective of data users.
Abstract: High-quality data are the precondition for analyzing and using big data and for guaranteeing the value of the data. Currently, comprehensive analysis and research of quality standards and quality assessment methods for big data are lacking. First, this paper summarizes reviews of data quality research. Second, this paper analyzes the data characteristics of the big data environment, presents quality challenges faced by big data, and formulates a hierarchical data quality framework from the perspective of data users. This framework consists of big data quality dimensions, quality characteristics, and quality indexes. Finally, on the basis of this framework, this paper constructs a dynamic assessment process for data quality. This process has good expansibility and adaptability and can meet the needs of big data quality assessment. The research results enrich the theoretical scope of big data and lay a solid foundation for the future by establishing an assessment model and studying evaluation algorithms.

631 citations


Network Information
Related Topics (5)
Information system
107.5K papers, 1.8M citations
80% related
Social network
42.9K papers, 1.5M citations
77% related
Social media
76K papers, 1.1M citations
77% related
The Internet
213.2K papers, 3.8M citations
77% related
Conceptual framework
30.2K papers, 1M citations
76% related
Performance
Metrics
No. of papers in the topic in previous years
YearPapers
2023164
2022272
2021206
2020211
2019216
2018134