Quotation Pfahlsberger, Lukas, Mendling, Jan. 2021. Dimensions of Big Data as an Impact Factor on Data Governance. In 25th Pacific Asia Conference on Information Systems, PACIS 2021, Virtual Event / Dubai, UAE, July 12-14, 2021, Hrsg. Doug Vogel, Kathy Ning Shen, Pan Shan Ling, M. N. Ravishankar, Jacky Xi Zhang, 95-110. Dubai: None.


RIS


BibTeX

Abstract

The application of big data in an organizational context is often seen as a crucial enabler for generating above-average firm performance. Therefore, many organizations are rushing with the technical expansion of big data. By doing that, organizations face the challenge of adapting the underlying data governance structures that are essential for managing and regulating big data in an effective and efficient manner. Currently, it is unknown in which way big data imposes new requirements for the design of data governance structures. In this paper, we address this research gap by empirically investigating the connection between seven big data dimensions and the two constituents of data governance, namely decision domains and data-specific roles. The results indicate that big data-influenced data governance needs to be driven by value-generating use cases and less by technical considerations in order to act as an accelerator for fostering a data-driven, -trustworthy, and faulttolerant corporate culture.

Tags

Press 'enter' for creating the tag

Publication's profile

Status of publication Published
Affiliation WU
Type of publication Contribution to conference proceedings
Language English
Title Dimensions of Big Data as an Impact Factor on Data Governance
Title of whole publication 25th Pacific Asia Conference on Information Systems, PACIS 2021, Virtual Event / Dubai, UAE, July 12-14, 2021
Editor Doug Vogel, Kathy Ning Shen, Pan Shan Ling, M. N. Ravishankar, Jacky Xi Zhang
Page from 95
Page to 110
Location Dubai
Year 2021
URL https://aisel.aisnet.org/pacis2021/95
Open Access N

Associations

People
Pfahlsberger, Lukas (Former researcher)
Mendling, Jan (Details)
Organization
Institute for Data, Process and Knowledge Management IN (Details)
Google Scholar: Search