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Stacking based approach for prediction of faulty modules

机译:基于堆叠的故障模块预测方法

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Determination of a software module, prone to fault is important before the defects are discovered; because it can be used for better prioritization of resources. Software fault prediction is one of such tasks that predicts the fault proneness of the developed modules by applying machine learning techniques on software defect data. State-of-art software defect prediction techniques suffer from achieving good accuracy due to the imbalanced nature of software defect datasets. To address this issue, here we present an approach for software defect prediction by combining imbalance removal and ensemble-model. As ensemble approach is very effective and provides better prediction results as compared to the individual techniques. The stacking-based framework is developed by considering the outperforming ensemble classifiers in order to predict the faulty software modules. All the experiments are performed over twelve benchmark NASA MDP datasets. The paper presents an improved ensemble-based stacking approach to classify the fault prediction for the software system in an effective way.
机译:在发现缺陷之前,易于故障的确定,容易出现故障;因为它可以用于更好地优先考虑资源。软件故障预测是通过在软件缺陷数据上应用机器学习技术来预测开发模块的故障典范的这样一个任务之一。由于软件缺陷数据集的不平衡性质,最先进的软件缺陷预测技术遭受了良好的准确性。为了解决这个问题,在这里我们通过组合不平衡删除和集合模型来提出一种软件缺陷预测方法。随着集合方法非常有效,与各个技术相比提供更好的预测结果。通过考虑优化的集合分类器来开发基于堆叠的框架,以预测故障的软件模块。所有实验都是通过12个基准NASA MDP数据集进行的。本文提出了一种改进的基于集合的堆叠方法,以有效的方式对软件系统的故障预测进行分类。

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