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Novel Insights on Cross Project Fault Prediction Applied to Automotive Software

机译:跨项目故障预测应用于汽车软件的新颖见解

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Defect prediction is a powerful tool that greatly helps focusing quality assurance efforts during development. In the case of the availability of fault data from a particular context, there are different ways of using such fault predictions in practice. Companies like Google, Bell Labs and Cisco make use of fault prediction, whereas its use within automotive industry has not yet gained a lot of attraction, although, modern cars require a huge amount of software to operate. In this paper, we want to contribute the adoption of fault prediction techniques for automotive software projects. Hereby we rely on a publicly available data set comprising fault data from three automotive software projects. When learning a fault prediction model from the data of one particular project, we achieve a remarkably high and nearly perfect prediction performance for the same project. However, when applying a cross-project prediction we obtain rather poor results. These results are rather surprising, because of the fact that the underlying projects are as similar as two distinct projects can possibly be within a certain application context. Therefore we investigate the reasons behind this observation through correlation and factor analyses techniques. We further report the obtained findings and discuss the consequences for future applications of Cross-Project Fault Prediction (CPFP) in the domain of automotive software.
机译:缺陷预测是一个强大的工具,可以极大地帮助您集中精力进行开发过程中的质量保证工作。在从特定上下文获得故障数据的情况下,实际上有多种使用此类故障预测的方式。诸如Google,Bell Labs和Cisco之类的公司都在使用故障预测,尽管在现代汽车中需要大量软件才能运行,但在汽车行业的故障预测仍未引起广泛的关注。在本文中,我们希望为汽车软件项目的故障预测技术的采用做出贡献。因此,我们依赖于一个公开可用的数据集,该数据集包含来自三个汽车软件项目的故障数据。当从一个特定项目的数据中学习故障预测模型时,我们为同一项目实现了非常高且几乎完美的预测性能。但是,当应用跨项目预测时,我们获得的结果很差。这些结果是相当令人惊讶的,因为这样的事实,即基础项目就像两个不同的项目可能在特定的应用程序上下文中一样。因此,我们通过相关性和因子分析技术调查了此观察结果背后的原因。我们将进一步报告获得的发现,并讨论跨项目故障预测(CPFP)在汽车软件领域的未来应用带来的后果。

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