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Software Defect Prediction using Feature Selection and Random Forest Algorithm

机译:基于特征选择和随机森林算法的软件缺陷预测

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Software testing is the most important task in software production and it takes a lot of time, cost and effort. Thus, we need to reduce these resources. Software Defect Prediction (SDP) mechanisms are used to enhance the work of SQA process through the prediction of defective modules, many approaches have been conducted by researchers in order to predict the fault-proneness modules. This paper proposed an approach for the SDP purpose, it employs two existed algorithms to have a high performance, that are the Bat-based search Algorithm (BA) for the feature selection process, and the Random Forest algorithm (RF) for the prediction purpose. This paper also has tested a number of feature selection algorithms and classifiers to see their effectiveness in this problem.
机译:软件测试是软件生产中最重要的任务,需要大量时间,成本和精力。因此,我们需要减少这些资源。软件缺陷预测(SDP)机制用于通过缺陷模块的预测来增强SQA过程的工作,研究人员已采用了许多方法来预测易错模块。本文提出了一种用于SDP的方法,它采用了两种具有较高性能的算法,即用于特征选择过程的基于Bat的搜索算法(BA)和用于预测目的的随机森林算法(RF)。 。本文还测试了许多特征选择算法和分类器,以查看它们在此问题中的有效性。

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