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Software Reliability Assessment: Modeling and Algorithms

机译:软件可靠性评估:建模和算法

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Non-homogeneous Poisson process (NHPP) software reliability growth models (SRGM) enable quantitative assessment of the software testing process. Software reliability models ranging from simple to complex have been proposed to characterize failure data that results from a variety of testing factors as well as non-uniform expenditure of testing effort. In order to predict the reliability of software accurately, it is important to apply models that both characterize the observed failure data well and make accurate predictions of the future. Efficient and robust algorithms to quickly estimate the model parameters despite inaccuracy in the initial estimates are also highly desirable. Ultimately, emphasis should be placed on predictive accuracy over complexity to best serve users of the research. This work presents the results of the preliminary contributions of the proposal including: (i) a heterogeneous single changepoint framework considering different models before and after the changepoint and (ii) comparison of testing effort models with a simple model as well as a testing effort model fit with an ECM algorithm to emphasize the importance of model predictive accuracy over increased model complexity. The preliminary findings will be used to serve as the basis of the overall contributions of the dissertation.
机译:非同质泊松过程(NHPP)软件可靠性增长模型(SRGM)使软件测试过程的定量评估能够进行定量评估。已经提出了从简单到复杂的软件可靠性模型,以表征来自各种测试因素的故障数据以及不均匀的测试工作支出。为了准确预测软件的可靠性,应用模型,它们都表征了观察到的失败数据良好并准确预测未来。尽管在初始估计中不准确,但快速估计模型参数的高效且鲁棒算法也是非常理想的。最终,强调应该对复杂性的预测准确性,以最佳服务的研究用户。这项工作提出了提案初步贡献的结果,包括:(i)在变换点之前和之后的不同模型和(ii)测试工作模型与简单模型以及测试工作模型的比较,考虑不同的模型,包括:(i)的异构单个变换点框架符合ECM算法,强调模型预测精度在提高模型复杂性上的重要性。初步调查结果将用于作为论文的整体贡献的基础。

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