Reliability Assessment for Open-Source Software Using Deterministic and Probabilistic Models

Islam S. Ramadan, H. Harb, Hamdy M. Mousa, Mohammed G. Malhat
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引用次数: 1

Abstract

Nowadays, computer software plays a significant role in all fields of our life. Essentially open-source software provides economic benefits for software companies such that it allows building new software without the need to create it from scratch. Therefore, it is extremely used, and accordingly, open-source software’s quality is a critical issue and one of the top research directions in the literature. In the development cycles of the software, checking the software reliability is an important indicator to release software or not. The deterministic and probabilistic models are the two main categories of models used to assess software reliability. In this paper, we perform a comparative study between eight different software reliability models: two deterministic models, and six probabilistic models based on three different methodologies: perfect debugging, imperfect debugging, and Gompertz distribution. We evaluate the employed models using three versions of a standard open-source dataset which is GNU’s Not Unix Network Object Model Environment projects. We evaluate the employed models using four evaluation criteria: sum of square error, mean square error, R-square, and reliability. The experimental results showed that for the first version of the open-source dataset SRGM-4 based on imperfect debugging methodology achieved the best reliability result, and for the last two versions of the open-source dataset SRGM-6 based on Gompertz distribution methodology achieved the best reliability result in terms of sum of square error, mean square error, and R-square.
基于确定性和概率模型的开源软件可靠性评估
如今,计算机软件在我们生活的各个领域起着重要的作用。从本质上讲,开源软件为软件公司提供了经济利益,因为它允许开发新软件而无需从头开始创建。因此,它被广泛使用,因此,开源软件的质量是一个关键问题,也是文献研究的前沿方向之一。在软件的开发周期中,检查软件的可靠性是决定是否发布软件的重要指标。确定性模型和概率模型是用于软件可靠性评估的两大类模型。在本文中,我们对八种不同的软件可靠性模型进行了比较研究:两种确定性模型和六种基于三种不同方法的概率模型:完全调试、不完全调试和Gompertz分布。我们使用三个版本的标准开源数据集来评估所使用的模型,该数据集是GNU的非Unix网络对象模型环境项目。我们使用四个评价标准来评价所采用的模型:平方和误差、均方误差、r平方和可靠性。实验结果表明,对于第一个版本的开源数据集,基于不完全调试方法的SRGM-4获得了最好的可靠性结果;对于后两个版本的开源数据集,基于Gompertz分布方法的SRGM-6在平方和误差、均方误差和r平方方面获得了最好的可靠性结果。
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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