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Parameter optimization of software reliability growth model with S-shaped testing-effort function using improved swarm intelligent optimization

机译:改进的群体智能优化算法,具有S形测功功能的软件可靠性增长模型的参数优化

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摘要

Software reliability growth model (SRGM) with testing-effort function (TEF) is very helpful for software developers and has been widely accepted and applied. However, each SRGM with TEF ( SRGMTEF) contains some undetermined parameters. Optimization of these parameters is a necessary task. Generally, these parameters are estimated by the Least Square Estimation (LSE) or the Maximum Likelihood Estimation (MLE). We found that the MLE can be used only when the software failure data to satisfy some assumptions such as to satisfy a certain distribution. However, the software failure data may not satisfy such a distribution. In this paper, we investigate the improvement and application of a swarm intelligent optimization algorithm, namely quantum particle swarm optimization (QPSO) algorithm, to optimize these parameters of SRGMTEF. The performance of the proposed SRGMTEF model with optimized parameters is also compared with other existing models. The experiment results show that the proposed parameter optimization approach using QPSO is very effective and flexible, and the better software reliability growth performance can be obtained based on SRGMTEF on the different software failure datasets. (C) 2015 Elsevier B.V. All rights reserved.
机译:具有测试工作量功能(TEF)的软件可靠性增长模型(SRGM)对软件开发人员非常有帮助,并已被广泛接受和应用。但是,每个带有TEF的SRGM(SRGMTEF)都包含一些不确定的参数。这些参数的优化是一项必要的任务。通常,这些参数是通过最小二乘估计(LSE)或最大似然估计(MLE)估计的。我们发现,仅当软件故障数据满足某些假设(例如满足一定的分布)时才可以使用MLE。但是,软件故障数据可能不满足这种分布。本文研究了一种群体智能优化算法,即量子粒子群算法(QPSO),以优化SRGMTEF的这些参数的改进和应用。还将所建议的带有优化参数的SRGMTEF模型的性能与其他现有模型进行比较。实验结果表明,提出的基于QPSO的参数优化方法非常有效且灵活,在不同的软件故障数据集上,基于SRGMTEF可以获得更好的软件可靠性增长性能。 (C)2015 Elsevier B.V.保留所有权利。

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