基于熵的支持向量回归bug预测

V. B. Singh, K. K. Chaturvedi
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引用次数: 30

摘要

软件缺陷预测是软件工程研究的关键领域之一。研究人员已经设计并实现了大量的缺陷/bug预测方法,即代码流失、过去的bug、重构、作者数量、文件大小和使用时间等,方法是根据准确性和复杂性来衡量性能。文献中还开发了不同的数学模型来监控错误的发生和修复过程。这些被称为软件可靠性增长模型的现有数学模型要么依赖于日历时间,要么依赖于测试工作量。软件中出现bug主要是由于软件代码的不断变化。软件代码的不断变化使代码变得复杂。Hassan[9]已经用熵的形式量化了代码变化的复杂性。在现有文献中,很少有作者利用传统的简单线性回归(SLR)方法提出基于熵的bug预测。本文提出了一种基于熵的基于支持向量回归(SVR)的bug预测方法。我们将所提出的模型的结果与文献中已有的模型进行了比较,发现所提出的模型是很好的bug预测器,因为它们在性能上显示出了显着的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Entropy based bug prediction using support vector regression
Predicting software defects is one of the key areas of research in software engineering. Researchers have devised and implemented a plethora of defect/bug prediction approaches namely code churn, past bugs, refactoring, number of authors, file size and age, etc by measuring the performance in terms of accuracy and complexity. Different mathematical models have also been developed in the literature to monitor the bug occurrence and fixing process. These existing mathematical models named software reliability growth models are either calendar time or testing effort dependent. The occurrence of bugs in the software is mainly due to the continuous changes in the software code. The continuous changes in the software code make the code complex. The complexity of the code changes have already been quantified in terms of entropy as follows in Hassan [9]. In the available literature, few authors have proposed entropy based bug prediction using conventional simple linear regression (SLR) method. In this paper, we have proposed an entropy based bug prediction approach using support vector regression (SVR). We have compared the results of proposed models with the existing one in the literature and have found that the proposed models are good bug predictor as they have shown the significant improvement in their performance.
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