Application of genetic algorithm as feature selection technique in development of effective fault prediction model

L. Kumar, S. Rath
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引用次数: 7

Abstract

Prediction of faults in a proposed software is helpful in deciding the amount of effort to be given for software development. We observed that, a good number of authors hypothesized that the performance of fault prediction model depends on the source code metrics which are used as input of the model. Feature selection technique is a process of selecting suitable set of source code metrics which may improve the performance of fault prediction model. In this work, genetic algorithm (GA) has been applied as feature selection technique to select the suitable set of source code metrics. This selected set of source code metrics are used as requisite input data to develop a classifier using five different classification techniques such as logistic regression, extreme learning machine, support vector machine (SVM) with three different kernel functions (linear, polynomial, and radial basis kernel functions) in order to predict the faulty and non-faulty classes. In this study, we propose a cost evaluation framework to perform cost based analysis for evaluating the effectiveness of fault prediction model. We perform experiments on thirty number of Java Open Source projects. From the obtained results, it is observed that the model developed using selected set of source code metrics obtained better result as compared to all metrics. From costs analysis framework, it is observed that the developed fault prediction model is best suitable for software with % of faulty classes less than the threshold value depending on fault identification efficiency (low-46.44%, median-45.37%, and high-36.63%).
应用遗传算法作为特征选择技术建立有效的故障预测模型
预测被提议的软件中的错误有助于决定软件开发的工作量。我们观察到,许多作者假设故障预测模型的性能取决于作为模型输入的源代码度量。特征选择技术是选择一组合适的源代码度量来提高故障预测模型性能的过程。本文采用遗传算法作为特征选择技术来选择合适的源代码度量集。这一选定的源代码度量集被用作必要的输入数据来开发一个分类器,该分类器使用五种不同的分类技术,如逻辑回归、极限学习机、支持向量机(SVM)和三种不同的核函数(线性、多项式和径向基核函数),以预测故障和非故障类。在本研究中,我们提出了一个成本评估框架来进行基于成本的分析,以评估故障预测模型的有效性。我们在30多个Java开源项目上进行实验。从获得的结果中,可以观察到使用选定的源代码度量集开发的模型与所有度量相比获得了更好的结果。从成本分析框架来看,根据故障识别效率的不同,所建立的故障预测模型最适合于故障类别百分比小于阈值的软件(低46.44%,中值45.37%,高36.63%)。
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