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Software Defect Prediction from Code Quality Measurements via Machine Learning

机译:通过机器学习从代码质量测量中预测软件缺陷

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Improvement in software development practices to predict and reduce software defects can lead to major cost savings. The goal of this study is to demonstrate the value of static analysis metrics in predicting software defects at a much larger scale than previous efforts. The study analyses data collected from more than 500 software applications, across 3 multi-year software development programs, and uses over 150 software static analysis measurements. A number of machine learning techniques such as neural network and random forest are used to determine whether seemingly innocuous rule violations can be used as significant predictors of software defect rates.
机译:改进软件开发实践以预测和减少软件缺陷可以节省大量成本。这项研究的目的是证明静态分析指标在预测软件缺陷方面的价值比以前的工作要大得多。该研究分析了3个多年期软件开发计划中从500多个软件应用程序收集的数据,并使用了150多个软件静态分析度量。许多机器学习技术(例如神经网络和随机森林)用于确定看似无害的违反规则是否可以用作软件缺陷率的重要预测指标。

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