Predicting maintainability of open source software using Gene Expression Programming and bad smells

Sandhya Tarwani, A. Chug
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引用次数: 11

Abstract

Software maintenance phase of Software Development Lifecycle (SDLC) is the most expensive and complex phase that requires nearly 60-70% of the total project cost. Due to this, many software fails to get repair within real time constraint. Ascribe to technology advancements and changing requirements, software must be well developed and maintained to get adapted. Hence, it is necessary to predict software maintainability in the early phases of the lifecycle so that optimization of resources can be possible and cost can be reduced. Software Maintainability is the quality attribute of software product that explains the ease with which modifications can be performed. The main focus in this study is to propose the use of Gene Expression Programming (GEP) for the software maintainability prediction and measure its performance with various machine leaning techniques such as Decision Tree Forest, Support Vector Machine, Linear regression, Multilayer Perceptron and Radial basis function neural network. The empirical study is conducted with the help of four open source datasets. Eleven bad smells are identified and is considered as maintenance effort. Results of this study show that GEP algorithm performs better than machine learning classifiers; hence it can be used as sound alternative in the prediction of software maintainability. This study would be helpful in achieving better resource allocation hence it will be useful for developers and maintainers.
使用基因表达式编程和不良气味预测开源软件的可维护性
软件开发生命周期(SDLC)的软件维护阶段是最昂贵和最复杂的阶段,需要项目总成本的近60-70%。因此,许多软件无法在实时约束下得到修复。由于技术的进步和需求的变化,软件必须得到很好的开发和维护以适应。因此,有必要在生命周期的早期阶段预测软件的可维护性,以便可以优化资源并降低成本。软件可维护性是软件产品的质量属性,它解释了执行修改的容易程度。本研究的主要重点是提出使用基因表达编程(GEP)进行软件可维护性预测,并使用决策树森林、支持向量机、线性回归、多层感知器和径向基函数神经网络等各种机器学习技术来测量其性能。本文利用四个开源数据集进行实证研究。确定了11种不良气味,并将其视为维护工作。研究结果表明,GEP算法优于机器学习分类器;因此,它可以作为预测软件可维护性的可靠选择。这项研究将有助于实现更好的资源分配,因此它将对开发人员和维护人员有用。
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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