基于机器学习技术的跨项目验证在开源软件可维护性预测中的应用

R. Malhotra, K. Lata
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引用次数: 6

摘要

设计和开发预测软件维护工作量的模型是一个迫在眉睫的研究领域,因为这些模型有助于在软件开发的早期阶段预测软件系统的维护工作量。这些模型的预测有助于在软件开发的测试和维护阶段以最优的方式分配有限的资源。虽然在过去使用机器学习(ML)和统计技术已经成功地开发了数字软件可维护性预测模型,但由于这些模型是在训练它们的同一数据集上进行验证的,因此结果的泛化性一直受到威胁。本研究试图通过跨项目验证来提高软件可维护性预测的通用性,其中在一个软件项目上开发的预测模型与另一个项目进行验证。为了实现我们的目标,我们采用了三个用java语言编写的开源项目。使用常用的性能度量来评估模型的性能。基于统计检验;跨项目验证可以成功地应用于预测开源软件的软件维护工作量,这是非常确凿的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the Application of Cross-Project Validation for Predicting Maintainability of Open Source Software using Machine Learning Techniques
Design and development of models to predict software maintenance effort is an impending research area as these models help to predict maintenance effort of software system at earlier stages of its development. The predictions of these models help in allocation of limited resources in an optimal way in the test and maintenance phases of software development. Although numeral software maintainability prediction models have been successfully developed in the past using machine learning (ML) and statistical techniques but there is always threat to generalizability of result have prevailed, as these models are validated on the same data set on which they are trained. This study endeavors to improve generalizability of the software maintainability prediction by cross-project validation where prediction model developed on one software project is validated against the other project. To meet our objective we have taken three open source projects written in java language.The performance of the models is evaluated using prevalent the performance measures. Based on the statistical tests; it is quite conclusive that cross project validation can be successfully applied to predict software maintenance effort of open source software.
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