灰熵绝对关联分析在软件缺陷类型预测中的应用

Lianjie Dong, Hongbo Shao, Zhou Jing
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引用次数: 0

摘要

在软件开发过程中,可靠性预测可以有效地提高软件开发质量。但由于工程数据集较小,往往会制约传统软件检测类型的预测方法,导致预测结果的不准确和不可靠。灰色关联分析(GRA)是一种常用来描述各因素之间影响程度的方法,适用于小型工程数据集。为此,在灰熵绝对关联分析(GEARA)的基础上,提出了一种软件缺陷分类预测方法。该方法首先选择一种算法对特征属性进行分析和选择,预测结果关联度较大;然后,利用异常项目检测算法对异常项目进行检测和剔除,得到一组工程项目。最后,利用灰熵绝对关联分析法对软件缺陷类型进行预测。仿真实验表明,该方法比传统方法具有更高的预测精度,预测速度更快。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Application of Software Defect Types Prediction Based on GreyEntropy Absolute Relational Analysis
In the software development process, reliability prediction can effectively improve its quality. But the small project data sets often restrain the predicting methods of the traditional software detect types, which causes the inaccuracy and unreliability of the predicting results. Grey relational analysis (GRA) is a method which is always used to describe the degree of influence among the factors and suitable for small project data sets. Therefore, on the basis of grey entropy absolute relational analysis (GEARA), we propose a software defect classification prediction method. Firstly, this method chooses an algorithm to carry on analysis and choice for feature attribute, which prediction result has greater relation degree. And then, it detects and removes anomaly project by using anomaly project detection algorithm and gets a set of engineering project. Finally, we use the grey entropy absolute relational analysis to predict software defect type. The simulation experiment indicated that proposed method owe a higher prediction precision than the traditional ones and predicted faster.
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