In-Depth Analysis and Prediction of Coupling Metrics of Open Source Software Projects

Munish Saini, Raghuvar Arora, S. O. Adebayo
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Abstract

This research was conducted to perform an in-depth analysis of the coupling metrics of 10 Open Source Software (OSS) projects obtained from the Comets dataset. More precisely, we analyze the dataset of object-oriented OSS projects (having 17 code related metrics such as coupling, complexity, and size metrics) to (1) examine the relationships among the coupling and other metrics (size, complexity), (2) analyze the pattern in the growth of software metrics, and (3) propose a model for prediction of coupling. To generalize the model of coupling prediction, we have applied different machine learning algorithms and validated their performance on similar datasets. The results indicated that the Random forests algorithm outperforms all other models. The relation analysis specifies the existence of strong positive relationships between the coupling, size, and complexity metrics while the pattern analysis pinpointed the increasing growth trend for coupling. The obtained outcomes will help the developers, project managers, and stakeholders in better understating the state of software health
开源软件项目耦合度量的深入分析与预测
这项研究是为了对从comet数据集获得的10个开源软件(OSS)项目的耦合度量进行深入分析。更准确地说,我们分析了面向对象的OSS项目的数据集(有17个代码相关的度量,如耦合、复杂性和大小度量),以(1)检查耦合和其他度量(大小、复杂性)之间的关系,(2)分析软件度量增长中的模式,以及(3)提出耦合预测的模型。为了推广耦合预测模型,我们应用了不同的机器学习算法,并在相似的数据集上验证了它们的性能。结果表明,随机森林算法优于其他所有模型。关系分析指定了耦合、大小和复杂性度量之间存在强烈的正相关关系,而模式分析指出了耦合的增长趋势。获得的结果将帮助开发人员、项目经理和涉众更好地了解软件的健康状态
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