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Efficient Fault Prediction Using Exploratory and Causal Techniques

机译:利用探究和因果技术进行有效的故障预测

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Software is basically a series or cluster of operational directions or instructions. The operations or functions performed by the system are regulated by a set of orderly arranged instructions. An error in the code of the developed software is called as software fault. This field attracted many researchers to work in this domain not only due to its advantages but also due to availability of open source dataset and existence of a lot of research publications in the domain. The study performs exploratory and causal relation technique between metrics and bugs. Exploratory Factor analysis is used to identify the important variables of bugs. The identified variables are used to develop a robust model. This study is the extension of our previous experiment in which some variables were analyzed to determine the important predictors. And these distinct predictors were identified and a robust regression model was developed. In this study, we used the same model but development and identification mechanism of variables is different. The results prove the capability of the technique used. The comparison of results presented in the study. On the basis of results obtained researchers are provided with future guidelines in this research work.
机译:软件基本上是一系列操作指导或说明。系统执行的操作或功能由一组有序排列的指令进行调节。开发的软件代码中的错误称为软件故障。这个领域吸引了许多研究人员在此领域工作,这不仅是由于其优势,还在于开源数据集的可用性以及该领域中许多研究出版物的存在。该研究执行了指标和错误之间的探索性和因果关系技术。探索性因素分析用于确定错误的重要变量。所识别的变量用于开发鲁棒模型。这项研究是我们先前实验的扩展,其中分析了一些变量以确定重要的预测因子。并确定了这些不同的预测因素,并开发了鲁棒的回归模型。在本研究中,我们使用相同的模型,但变量的开发和识别机制不同。结果证明了所使用技术的能力。研究结果比较。根据获得的结果,研究人员将在这项研究工作中获得未来的指导。

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