Attribute Rule performance in Data Mining for Software Deformity Prophecy Datasets Models

Salahuddin Shaikh, Liu Changan, Maaz Rasheed Malik
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引用次数: 2

Abstract

In recently, all the developers, programmer and software engineers, they are working specially on software component and software testing to compete the software technology in the world. For this competition, they are using different kind of sources to analysis the software reliability and importance. Nowadays Data mining is one of source, which is used in software for overcome the problem of software fault which occur during the software test and its analysis. This kind of problem leads software deformity prophecy in software. In this research paper, we are also trying to overcome the software deformity prophecy problem with the help of our proposed solution called ONER rule attribute. We have used REPOSITORY datasets models, these datasets models are defected and non-defected datasets models. Our analysis class of interest is defected models. In our research, we have analyzed the efficiency of our proposed solution methods. The experiments results showed that using of ONER with discretize, have improved the efficiency of correctly classified instances in all. Using percentage split and training datasets with ONER discretize rule attribute have improved correctly classified in all datasets models. The analysis of positive accuracy f-measure is also increased in percentage split during the use of ONER with discretize but in some datasets models, the training data and cross validation is better with use of ONER rule attribute. The area under curve (ROC) in both scenarios using ONER rule attribute and discretize with ONER rule attribute is almost same or equal with each other.
软件畸形预测数据集模型数据挖掘中的属性规则性能
近年来,所有的开发人员、程序员和软件工程师都致力于软件组件和软件测试,以与世界上的软件技术竞争。在本次竞赛中,他们利用不同的资源来分析软件的可靠性和重要性。目前,数据挖掘是软件测试和分析过程中出现的软件故障的解决方法之一。这类问题导致软件畸形预言。在本研究中,我们还试图通过我们提出的解决方案ONER规则属性来克服软件畸形预测问题。我们已经使用了REPOSITORY数据集模型,这些数据集模型分为有缺陷的和无缺陷的数据集模型。我们感兴趣的分析类是有缺陷的模型。在我们的研究中,我们分析了我们提出的解决方法的效率。实验结果表明,利用离散化方法对实例进行正确分类,总体上提高了分类效率。使用百分比分割和带有ONER离散规则属性的训练数据集提高了所有数据集模型的正确分类。在使用离散化的ONER时,正精度f-测度的分析在百分比分割上也有所提高,但在某些数据集模型中,使用ONER规则属性对训练数据和交叉验证效果更好。在使用ONER规则属性和用ONER规则属性离散的两种情况下,曲线下面积(ROC)几乎相同或相等。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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