A new metric for predicting software change using gene expression programming

R. Malhotra, Megha Khanna
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引用次数: 14

Abstract

Software metrics help in determining the quality of a software product. They can be used for continuous inspection of a software to assist software developers in improving its quality. We can also use metrics to develop quality models which predict important quality attributes like change proneness. Determination of change prone classes in an Object-Oriented software will help software developers to focus their time and resources on the weak portions of the software. In this paper, we validate the Chidamber and Kemerer metric suite for building an efficient software quality model which predict change prone classes with the help of Gene Expression Programming. The model is developed using an open source software. We further propose a new metric which can be used for identifying change prone classes in the early phases of software development life cycle. The proposed metric is validated on another open source software and the results show that it can be effectively used by the software industry to classify change prone classes. Identification of change prone classes may help in efficient refactoring and rigorous testing of these classes in the forthcoming releases of the software product.
一种利用基因表达式编程预测软件变化的新度量
软件度量有助于确定软件产品的质量。它们可以用于软件的持续检查,以帮助软件开发人员提高其质量。我们还可以使用量度来开发质量模型,以预测重要的质量属性,如变更倾向。确定面向对象软件中易发生变化的类将有助于软件开发人员将时间和资源集中在软件的薄弱部分上。在本文中,我们验证了Chidamber和Kemerer度量套件,以建立一个有效的软件质量模型,该模型可以在基因表达式编程的帮助下预测易于变化的类。该模型是使用开源软件开发的。我们进一步提出了一个新的度量标准,它可以用于在软件开发生命周期的早期阶段识别易发生变化的类。所提出的度量在另一个开源软件上进行了验证,结果表明它可以被软件行业有效地用于对易发生变化的类进行分类。识别易发生变更的类有助于在即将发布的软件产品版本中对这些类进行有效的重构和严格的测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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