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A Neuro-Based Software Fault Prediction with Box-Cox Power Transformation

机译:基于Box-Cox功率变换的基于神经的软件故障预测

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Software fault prediction is one of the most fundamental but significant management techniques in software dependability assessment. In this paper we concern the software fault prediction using a multilayer-perceptron neural network, where the underlying software fault count data are transformed to the Gaussian data, by means of the well-known Box-Cox power transformation. More specially, we investigate the long-term behavior of software fault counts by the neural network, and perform the multi-stage look ahead prediction of the cumulative number of software faults detected in the future software testing. In numerical examples with two actual software fault data sets, we compare our neural network approach with the existing software reliability growth models based on nonhomogeneous Poisson process, in terms of predictive performance with average relative error, and show that the data transformation employed in this paper leads to an improvement in prediction accuracy.
机译:软件故障预测是软件可靠性评估中最基本但最重要的管理技术之一。在本文中,我们关注使用多层感知器神经网络的软件故障预测,其中,通过众所周知的Box-Cox功率转换将基础软件故障计数数据转换为高斯数据。更具体地说,我们通过神经网络调查软件故障计数的长期行为,并对未来的软件测试中检测到的软件故障的累积数量执行多阶段的前瞻性预测。在具有两个实际软件故障数据集的数值示例中,我们将神经网络方法与基于非均匀泊松过程的现有软件可靠性增长模型进行了比较,在具有平均相对误差的预测性能方面,表明本文采用的数据转换导致预测准确性的提高。

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