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Software reliability prediction model based on relevance vector machine

机译:基于相关向量机的软件可靠性预测模型

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Relevance vector machines have been successfully used in many domains, while their application in software reliability prediction is still quite rare. We proposed an RVM-based model for software reliability prediction, the RVM learning scheme is applied to the failure time data, forcing the network to learn and recognize the inherent internal temporal property of software failure sequence in order to capture the most current feature hidden inside the software failure behavior. We also compare the prediction accuracy of software reliability prediction models based on RVM, SVM and ANN. Experimental results show that our proposed RVM-based software reliability prediction model could achieve a higher prediction accuracy compared with ANN-based and SVM-based models.
机译:相关向量机已经在许多领域成功使用,而它们在软件可靠性预测中的应用仍然很少。我们提出了一种基于RVM的软件可靠性预测模型,将RVM学习方案应用于故障时间数据,迫使网络学习和识别软件故障序列的固有内部时间特性,以捕获隐藏在内部的最新特征。软件故障行为。我们还比较了基于RVM,SVM和ANN的软件可靠性预测模型的预测准确性。实验结果表明,与基于人工神经网络和基于支持向量机的模型相比,本文提出的基于RVM的软件可靠性预测模型可以获得更高的预测精度。

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