The local bias based weighted sampling technique helps reduce negative impacts of local bias on model performance. Results Our results show that the local bias largely exists in cross company dataset, and the local bias negatively impacts the performance of parametric model. The studies are conducted on the latest COCOMO II calibration dataset. Method We design and conduct three empirical studies to measure, analyze and address local bias in cross-company dataset, including: (1) defining a method for measuring the local bias associated with individual organization data subset in the overall dataset (2) analyzing the impacts of local bias on the performance of an estimation model (3) proposing a weighted sampling approach to handle local bias. Objective This study aims at quantitatively analyzing and effectively handling local bias associated with historical cross-company data, thus improves the usability of cross-company datasets for calibrating and maintaining parametric estimation models. However, there is a lack of understanding about the cumulative effects of such local calibration practices on the evolution of general parametric models over time.
#Barry boehm cocomo model influence in industry software
Local calibration by tuning a subset of model parameters is a frequent practice when software organizations adopt parametric estimation models to increase model usability and accuracy. The local bias based weighted sampling technique can be applied to trade-off and mitigate potential risk of significant local bias, which limits the usability of cross-company data for general parametric model calibration and maintenance.Ībstract = "Context Parametric cost estimation models need to be continuously calibrated and improved to assure more accurate software estimates and reflect changing software development contexts. The proposed local bias measure offers a means to quantify degree of local bias associated with a cross-company dataset, and assess its influence on parametric model performance. Conclusion Local bias in cross-company data does harm model calibration and adds noisy factors to model maintenance.
Context Parametric cost estimation models need to be continuously calibrated and improved to assure more accurate software estimates and reflect changing software development contexts.