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Tehniskā parāda mērīšana×Defektu prognozēšanas modelis×
NozareProgrammatūras inženierijaProgrammatūras inženierija
SaimeProcess / pipelineProcess / pipeline
Izcelsmes gads19922005
AutorsWard CunninghamThomas Ostrand, Elaine Weyuker, Robert Bell
Tipsquantitative assessmentmachine learning model
PirmavotsCunningham, W. (1992). The WyCash Portfolio Management System. OOPSLA 92 Experience Report. link ↗Ostrand, T. J., Weyuker, E. J., & Bell, R. M. (2005). Predicting the location and number of faults in large software systems. IEEE Transactions on Software Engineering, 31(4), 340–355. DOI ↗
Citi nosaukumidebt metrics, code health scoring, maintenance burden assessmentfault prediction, bug prediction, defect classification
Saistītās44
KopsavilkumsTechnical debt represents accumulated shortcuts, deferred maintenance, and design compromises that incur future costs through slower development, higher defect rates, and deployment difficulty. Introduced by Ward Cunningham (1992), technical debt measurement quantifies these burdens using metrics like code complexity, duplication, test coverage gaps, and maintainability indices. Organizations use debt measurement to balance immediate delivery with long-term sustainability.Defect prediction models forecast the likelihood of software faults in code modules using statistical or machine learning approaches. Pioneered by Ostrand, Weyuker, and Bell (2005), these models correlate code metrics (complexity, churn, coupling) with historical defect data to identify high-risk components. Organizations use predictions to allocate testing resources, guide code review, and prioritize refactoring.
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ScholarGateSalīdzināt metodes: Technical Debt Measurement · Defect Prediction Model. Izgūts 2026-06-18 no https://scholargate.app/lv/compare