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Software Risk Estimation Through Bug Reports Analysis and Bug-fix Time Predictions

机译:通过错误报告分析和错误修复时间预测软件风险估算

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Categorizing the level of software risk components is very important for software developers. This categorization allows the developers to increase software availability, security, and provide better project management process. This research proposes a novel approach risk estimation system that aims to help software internal stakeholders to evaluate the currently existing software risk by predicting a quantitative software risk value. This risk value is estimated using the earlier software bugs reports based on a comparison between current and upcoming bug-fix time, duplicated bugs records, and the software component priority level. The risk value is retrieved by using a machine learning on a Mozilla Core dataset (Networking: HTTP software component) using Tensorflow tool to predict a risk level value for specific software bugs. The total risk results ranged from 27.4% to 84% with maximum bug-fix time prediction accuracy of 35%. Also, the result showed a strong relationship for the risk values obtained from the bug-fix time prediction and showed a low relationship with the risk values from the duplicated bug records.
机译:对软件开发人员来说,对软件风险组件的级别分类非常重要。该分类允许开发人员提高软件可用性,安全性并提供更好的项目管理过程。本研究提出了一种新的方法风险估算系统,旨在帮助软件内部利益相关者通过预测定量软件风险值来评估目前现有的软件风险。基于当前和即将到来的错误 - 修复时间,重复的错误记录和软件组件优先级之间的比较,使用前面的软件错误报告估计该风险值。使用TensorFlow工具使用Mozilla核心数据集(网络:HTTP软件组件)上的机器学习来检索风险值,以预测特定软件错误的风险级别值。风险总量从27.4%到84%,最大错误 - 修复时间预测精度为35%。此外,结果表明,对于从错误 - 修复时间预测获得的风险值,并且与从重复的错误记录中的风险值显示出低关系的强烈关系。

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