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Software fault prediction using Whale algorithm with genetics algorithm

机译:基因算法鲸瓦算法的软件故障预测

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Software fault prediction became an essential research area in the last few years, there are many prediction and optimization techniques that have been developed for fault prediction. In this paper, an approach is developed by integrating genetics algorithm with support vector machine (SVM) classifier and Whale optimization algorithm for software fault prediction. The developed approach is applied to 24 datasets (12-NASA MDP and 12-Java open-source projects), where NASA MDP is considered as a large-scale dataset, and Java open source projects are considered as a small-scale dataset. Results indicate that integrating Genetics algorithm with SVM and Whale algorithm improves the performance of the software fault prediction process when it is applied to large-scale and small-scale datasets and overcome the limitations that appeared in the previous studies.
机译:软件故障预测在过去几年中成为一个基本的研究区域,已经开发了许多用于故障预测的预测和优化技术。在本文中,通过将遗传算法与支持向量机(SVM)分类器和软件故障预测的鲸联优化算法集成了一种方法来开发方法。开发方法应用于24个数据集(12-NASA MDP和12-Java开源项目),其中NASA MDP被视为大规模数据集,Java开源项目被视为小型数据集。结果表明,当它应用于大规模和小规模数据集时,将遗传算法与SVM和Whale算法集成到软件故障预测过程的性能,并克服了先前研究中出现的限制。

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