软件工程中时间相关数据分析的鲁棒方法

Nyyti Saarimäki, Sergio Moreschini, Francesco Lomio, R. Peñaloza, Valentina Lenarduzzi
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引用次数: 3

摘要

背景。最近的几个软件工程研究使用了从不同软件项目采用的版本控制系统中挖掘出来的数据。然而,检查这些研究中使用的数据和统计方法,发现目前的方法存在若干问题,主要与数据的依赖性有关。目标。我们在提交级别分析了软件工程中的时间依赖性数据,并提出了一种基于时间序列分析的替代方法。方法。我们确定了为时间序列分析设计的统计测试,并提出了一种对时间相关数据建模的技术,类似于在金融和天气预报中所做的。我们将我们的方法应用到一小部分不同规模的项目中,调查SQALE索引的行为,以突出不同提交的时间和相互依赖性。结果。使用这些技术,我们对数据进行了分析和建模,表明可以使用时间序列分析方法来研究这种类型的提交数据。结论。基于有希望的结果,我们计划通过复制以前的工作来验证该方法的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards a Robust Approach to Analyze Time-Dependent Data in Software Engineering
Background. Several recent software engineering studies use data mined from the version control systems adopted by the different software projects. However, inspecting the data and statistical methods used in those studies reveals several problems with the current approach, mainly related to the dependent nature of the data. Objective. We analyzed time-dependent data in software engineering at commit level, and propose an alternative approach based on time series analysis. Method. We identified statistical tests designed for time series analysis and propose a technique to model time dependent data, similarly to what is done in finance and weather forecasting. We applied our approach to a small set of projects of different sizes, investigating the behaviour of the SQALE Index, in order to highlight the time and interdependency of the different commits. Results. Using these techniques, we analysed and model the data, showing that it is possible to investigate this type of commit data using methods from time series analysis. Conclusion. Based on the promising results, we plan to validate the robustness of the approach by replicating previous works.
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