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APPLYING NEURAL NETWORKS TO SOFTWARE RELIABILITY ASSESSMENT

机译:将神经网络应用于软件可靠性评估

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We adapt concepts from the field of neural networks to assess the reliability of software, employing cumulative failures, reliability, remaining failures, and time to failure metrics. In addition, the risk of not achieving reliability, remaining failure, and time to failure goals are assessed. The purpose of the assessment is to compare a criterion, derived from a neural network model, for estimating the parameters of software reliability metrics, with the method of maximum likelihood estimation. To our surprise the neural network method proved superior for all the reliability metrics that were assessed by virtue of yielding lower prediction error and risk. We also found that considerable adaptation of the neural network model was necessary to be meaningful for our application - only inputs, functions, neurons, weights, activation units, and outputs were required to characterize our application.
机译:我们采用神经网络领域的概念来评估软件的可靠性,并采用累积故障,可靠性,剩余故障和故障时间指标。此外,还评估了未达到可靠性的风险,剩余故障以及达到故障目标的时间。评估的目的是将从神经网络模型中得出的用于估计软件可靠性指标参数的标准与最大似然估计方法进行比较。令我们惊讶的是,神经网络方法在通过降低预测误差和降低风险而评估的所有可靠性指标中均被证明具有优越性。我们还发现,对我们的应用有意义的是,必须对神经网络模型进行相当大的调整-只需输入,功能,神经元,权重,激活单位和输出即可表征我们的应用。

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