基于人工神经网络的软件易故障预测模型度量选择

C. Jin, Shu-Wei Jin, Junmin Ye
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引用次数: 32

摘要

模块的故障识别对于降低软件开发成本和提高软件开发效率具有重要意义。如何获得软件度量与模块故障倾向性之间的关系一直是研究的热点。获得这种关系的一个技术挑战是软件度量之间存在相关性。为了克服这个问题,作者提出了一个降维阶段,该阶段可以在任何软件易故障预测模型中普遍实现。在这项研究中,作者介绍了人工神经网络(ANN)和支持向量机在基于度量的软件故障倾向预测中的应用。为了适应软件数据的特点,提出了一种新的评价函数来计算各指标的贡献。该方法的重要特点是在度量选择过程中自动确定人工神经网络体系结构。使用了四个软件数据集来评估所提出模型的性能。实验结果表明,该模型能够建立软件度量与模块故障倾向之间的关系。此外,它也非常简单,因为它的实现既不需要额外的成本,也不需要专家的知识。该模型具有良好的性能,可为软件项目管理者提供可靠的易故障构件指标。
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Artificial neural network-based metric selection for software fault-prone prediction model
The identification of a module's fault-proneness is very important for minimising cost and improving the effectiveness of the software development process. How to obtain the relation between software metrics and a module's fault-proneness has been the focus of much research. One technical challenge to obtain this relation is that there is relevance between software metrics. To overcome this problem, the authors propose a reduction dimensionality phase, which can be generally implemented in any software fault-prone prediction model. In this study, the authors present applications of artificial neural network (ANN) and support vector machine in software fault-prone prediction using metrics. A new evaluation function for computing the contribution of each metric is also proposed in order to adapt to the characteristics of software data. The vital characteristic of this approach is the automatic determination of ANN architecture during metrics selection. Four software datasets are used for evaluating the performance of the proposed model. The experimental results show that the proposed model can establish the relation between software metrics and modules’ fault-proneness. Moreover, it is also very simple because its implementation requires neither extra cost nor expert's knowledge. The proposed model has good performance, and can provide software project managers with trustworthy indicators of fault prone components.
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