基于状态转移模型的贝叶斯网络模型在软件缺陷检测中的应用

N. Jongsawat, W. Premchaiswadi
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引用次数: 4

摘要

本文描述了一个贝叶斯网络模型来诊断软件测试过程中软件缺陷检测的因果关系。目的是使用BN模型来识别有缺陷的软件模块,进行有效的软件测试,以提高软件系统的质量。它也可以作为一种决策工具来帮助软件开发人员确定软件开发项目的每个阶段的缺陷优先级。BN工具可以提供在软件测试中每个阶段发现的软件缺陷与影响软件缺陷检测的其他因素之间的因果关系。首先,我们构建了一个状态和转换模型,该模型用于提供一个简单的框架,用于集成有关软件缺陷检测和各种因素的知识。其次,我们将状态和转移模型转换为贝叶斯网络模型。第三,BN模型的概率是通过软件专家的知识和以前的软件开发项目或阶段来确定的。最后,我们观察变量之间的相互作用,并允许预测外部操纵的影响。我们相信,在不同的软件开发生命周期中,STM和BN模型都可以作为非常实用的工具来预测软件缺陷和可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Developing a Bayesian Network Model Based on a State and Transition Model for Software Defect Detection
This paper describes a Bayesian Network model-to diagnose the causes-effect of software defect detection in the process of software testing. The aim is to use the BN model to identify defective software modules for efficient software test in order to improve the quality of a software system. It can also be used as a decision tool to assist software developers to determine defect priority levels for each phase of a software development project. The BN tool can provide a cause-effect relationship between the software defects found in each phase and other factors affecting software defect detection in software testing. First, we build a State and Transition Model that is used to provide a simple framework for integrating knowledge about software defect detection and various factors. Second, we convert the State and Transition Model into a Bayesian Network model. Third, the probabilities for the BN model are determined through the knowledge of software experts and previous software development projects or phases. Last, we observe the interactions among the variables and allow for prediction of effects of external manipulation. We believe that both STM and BN models can be used as very practical tools for predicting software defects and reliability in varying software development lifecycles.
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