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Predicting Software Reliability With Neural Network Ensembles

机译:使用神经网络集成预测软件可靠性

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摘要

Software reliability is an important factor for quantitatively characterizing software quality and estimating the duration of software testing period.Traditional parametric software reliability growth models (SRGMs) such as nonhomogeneous Poisson process (NHPP) models have been successfully utilized in practical software reliability engineering.However,no single such parametric model can obtain accurate prediction for all cases.In addition to the parametric models,non-parametric models like neural network have shown to be effective alternative techniques for software reliability prediction.In this paper,we propose a non-parametric software reliability prediction system based on neural network ensembles.The effects of system architecture on the performance are investigated.The comparative studies between the proposed system with the single neural network based system and three parametric NHPP models are carried out.The experimental results demonstrate that the system predictability can be significantly improved by combing multiple neural networks.
机译:软件可靠性是定量表征软件质量和估计软件测试周期的重要因素。非参数化的软件可靠性增长模型(SRGM),例如非均质Poisson过程(NHPP)模型已成功地应用于实际的软件可靠性工程中。除了参数模型之外,像神经网络这样的非参数模型已被证明是有效的软件可靠性预测替代技术。本文提出了一种非参数软件基于神经网络集成的可靠性预测系统。研究了系统架构对性能的影响。将所提出的系统与基于单个神经网络的系统和三个参数化NHPP模型进行了比较研究。实验结果表明,该系统可预测性可以通过组合多个神经网络得到显着改善。

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