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Модель прогнозирования дефектов×Метрики сложности программного обеспечения×
ОбластьПрограммная инженерияПрограммная инженерия
СемействоProcess / pipelineProcess / pipeline
Год появления20051976
Автор методаThomas Ostrand, Elaine Weyuker, Robert BellThomas J. McCabe
Типmachine learning modelquantitative measurement
Основополагающий источникOstrand, 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 ↗McCabe, T. J. (1976). A complexity measure. IEEE Transactions on Software Engineering, 2(4), 308–320. DOI ↗
Другие названияfault prediction, bug prediction, defect classificationcode complexity analysis, complexity measurement
Связанные44
СводкаDefect 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.Software complexity metrics quantify the structural and operational difficulty of code through numerical measurements. Introduced by Thomas McCabe in 1976, cyclomatic complexity became the foundational approach. These metrics assess maintainability, testability, and defect risk, enabling teams to identify problematic code regions and guide refactoring efforts.
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  2. 3 Источники
  3. PUBLISHED
  1. v1
  2. 3 Источники
  3. PUBLISHED

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ScholarGateСравнение методов: Defect Prediction Model · Software Complexity Metrics. Получено 2026-06-17 из https://scholargate.app/ru/compare