Publication details

Predicting Data Quality Success - The Bullwhip Effect in Data Quality

Authors

GE Mouzhi HELFERT Markus O'BRIEN Tony

Year of publication 2017
Type Article in Proceedings
Conference Proceedings of the 16th International Conference on Perspectives in Business Informatics Research
MU Faculty or unit

Faculty of Informatics

Citation
Web Springer, CORE B conference, SCOPUS, WoS, DBLP
Doi http://dx.doi.org/10.1007/978-3-319-64930-6_12
Field Informatics
Keywords Data quality; Bullwhip effect; Data quality success; Supply chain; Data quality improvement
Description Over the last years many data quality initiatives and suggestions report how to improve and sustain data quality. However, almost all data quality projects and suggestions focus on the assessment and one-time quality improvement, especially, suggestions rarely include how to sustain the continuous data quality improvement. Inspired by the work related to variability in supply chains, also known as the Bullwhip effect, this paper aims to suggest how to sustain data quality improvements and investigate the effects of delays in reporting data quality indicators. Furthermore, we propose that a data quality prediction model can be used as one of countermeasures to reduce the Data Quality Bullwhip Effect. Based on a real-world case study, this paper makes an attempt to show how to reduce this effect. Our results indicate that data quality success is a critical practice, and predicting data quality improvements can be used to decrease the variability of the data quality index in a long run.

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