Published January 1, 2025 | Version v1
Journal article Open

Application of a Size Measurement Standard for Data Warehouse Projects

  • 1. Izmir Inst Technol, Izmir, Turkiye

Description

MethodologyIn this research, we conducted a case study to establish a foundation for size measurement and effort estimation in DWH projects. We first applied a productivity-based estimation approach using linear regression with the ISBSG repository to assist organizations without historical data. We then evaluated various machine learning algorithms to improve estimation accuracy. Finally, we tested a combined model that integrates both approaches for estimating effort in external projects.ResultsUsing the ISBSG dataset, linear regression models based on productivity achieved a Mean Magnitude of Relative Error (MMRE) of 0.285. Machine learning algorithms improved accuracy by 22.81%, reducing the MMRE to 0.220. The final model, applied to external projects, yielded MRE values between 0.010 and 0.245.ConclusionThe ISBSG repository is a valuable resource for effort estimation in DWH projects. Combining productivity-based estimation with machine learning enhances accuracy and predictive performance, making it a more reliable approach than traditional models.

Files

bib-3129b6f5-943e-44e3-80e7-cc5dc14a79fd.txt

Files (179 Bytes)

Name Size Download all
md5:22e8ec020dcfa1bd823f025804d85760
179 Bytes Preview Download