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Machine Learning Approach for Software Reliability Growth Modeling with Infinite Testing Effort Function

机译:带有无限测试工作量功能的软件可靠性增长建模的机器学习方法

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摘要

Reliability is one of the quantifiable software quality attributes. Software Reliability Growth Models (SRGMs) are used to assess the reliability achieved at different times of testing. Traditional time-based SRGMs may not be accurate enough in all situations where test effort varies with time. To overcome this lacuna, test effort was used instead of time in SRGMs. In the past, finite test effort functions were proposed, which may not be realistic as, at infinite testing time, test effort will be infinite. Hence in this paper, we propose an infinite test effort function in conjunction with a classical Nonhomogeneous Poisson Process (NHPP) model. We use Artificial Neural Network (ANN) for training the proposed model with software failure data. Here it is possible to get a large set of weights for the same model to describe the past failure data equally well. We use machine learning approach to select the appropriate set of weights for the model which will describe both the past and the future data well. We compare the performance of the proposed model with existing model using practical software failure data sets. The proposed log-power TEF based SRGM describes all types of failure data equally well and also improves the accuracy of parameter estimation more than existing TEF and can be used for software release time determination as well.
机译:可靠性是可量化的软件质量属性之一。软件可靠性增长模型(SRGM)用于评估在不同测试时间获得的可靠性。传统的基于时间的SRGM可能在测试工作量随时间变化的所有情况下不够准确。为了克服这一缺陷,SRGM中使用了测试工作来代替时间。过去,提出了有限的测试工作量函数,由于在无限的测试时间测试工作量将是无限的,因此可能不切实际。因此,在本文中,我们结合经典的非均匀泊松过程(NHPP)模型提出了无限的测试工作量函数。我们使用人工神经网络(ANN)使用软件故障数据训练提出的模型。在这里,可以为同一模型获得大量的权重,以同样好地描述过去的故障数据。我们使用机器学习方法为模型选择合适的权重集,以很好地描述过去和将来的数据。我们使用实际的软件故障数据集将建议的模型的性能与现有模型进行比较。所提出的基于对数功率TEF的SRGM可以很好地描述所有类型的故障数据,并且比现有的TEF更好地提高了参数估计的准确性,也可以用于确定软件发布时间。

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