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Predicting the Number of Reported Bugs in a Software Repository

机译:预测软件存储库中报告的错误数

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The bug growth pattern prediction is a complicated, unrelieved task, which needs considerable attention. Advance knowledge of the likely number of bugs discovered in the software system helps software developers in designating sufficient resources at a convenient time. The developers may also use such information to take necessary actions to increase the quality of the system and in turn customer satisfaction. In this study, we examine eight different time series forecasting models, including Long Short Term Memory Neural Networks (LSTM), auto-regressive integrated moving average (ARIMA), and Random Forest Regressor. Further, we assess the impact of exogenous variables such as software release dates by incorporating those to the prediction models. We analyze the quality of long-term prediction for each model based on different performance metrics. The assessment is conducted on Mozilla, which is a large open-source software application. The dataset is originally mined from Bugzilla and contains the number of bugs for the project between Jan 2010 and Dec 2019. Our numerical analysis provides insights on evaluating the trends in a bug repository. We observe that LSTM is effective when considering long-run predictions whereas Random Forest Regressor enriched by exogenous variables performs better for predicting the number of bugs in the short term.
机译:错误增长模式预测是一项复杂的,繁重的任务,需要引起足够的重视。对软件系统中可能发现的错误数量的预先了解有助于软件开发人员在方便的时候指定足够的资源。开发人员还可以使用此类信息采取必要的措施来提高系统质量,进而提高客户满意度。在这项研究中,我们研究了八个不同的时间序列预测模型,包括长期短期记忆神经网络(LSTM),自回归综合移动平均值(ARIMA)和随机森林回归。此外,我们通过将预测变量纳入预测模型来评估诸如软件发布日期之类的外部变量的影响。我们根据不同的性能指标分析每种模型的长期预测质量。评估是在Mozilla(这是一个大型开源软件应用程序)上进行的。该数据集最初是从Bugzilla提取的,其中包含该项目在2010年1月至2019年12月之间的错误数量。我们的数值分析提供了有关评估错误存储库中趋势的见解。我们观察到LSTM在考虑长期预测时是有效的,而由外生变量丰富的随机森林回归在短期内预测虫子数量方面表现更好。

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