Performance analysis of different software reliability prediction methods

S. Saif, Mudasir M Kirmani, A. Wahid
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Abstract

Software has gained popularity in daily activities ranging from small scale applications running on handheld devices to complex application and big data processing. The software is critical in nature as it has become the most vital part of a system resulting in risks related to software failures. The risk estimate associated with a system can be calculated using different techniques. The performance of these techniques in predicting performance has not been satisfactory under different system parameters defined in advance. A very important aspect of a software system is to monitor the behaviour of the software across different platforms. Software reliability is an important domain in monitoring and managing performance of a software system. Therefore, the need of the hour is to predict software reliability comprehensively using all scientifically acquired data sets. In this paper comprehensive analysis of various parametric and non-parametric reliability growth models has been performed. The results give an insight insight into the effectiveness of non-parametric model while calculating software reliability. This paper further justifies the importance of neural network based models in calculating reliability prediction of a software system.
不同软件可靠性预测方法的性能分析
从在手持设备上运行的小型应用程序到复杂的应用程序和大数据处理,软件在日常活动中越来越受欢迎。软件本质上是关键的,因为它已经成为系统中最重要的部分,导致与软件故障相关的风险。与系统相关的风险评估可以使用不同的技术进行计算。在预先确定的不同系统参数下,这些技术的性能预测效果并不令人满意。软件系统的一个非常重要的方面是监视跨不同平台的软件行为。软件可靠性是监控和管理软件系统性能的一个重要领域。因此,当务之急是综合利用所有科学获取的数据集来预测软件的可靠性。本文对各种参数和非参数可靠性增长模型进行了综合分析。研究结果对非参数模型在软件可靠性计算中的有效性有了深入的认识。本文进一步论证了基于神经网络的模型在软件系统可靠性预测计算中的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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