基于贝叶斯信念网络的软件系统质量风险分析

Yong Hu, Juhua Chen, Jiaxing Huang, Mei Liu, Kang Xie
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引用次数: 5

摘要

软件项目开发过程中的不确定性往往会给承包商和客户带来巨大的风险。开发一种有效的方法来预测软件项目的成本和质量,在项目开始时基于项目特征和双方合作能力等事实,可以帮助我们找到降低风险的方法。贝叶斯信念网络(BBN)是一种分析不确定结果的良好工具,但难以生成精确的网络结构和条件概率表。本文采用德尔菲法进行条件概率表学习,构建网络结构,并学会根据应用案例不断更新节点的概率表和置信度,从而使评估网络具有学习能力,更准确地评估组织中的软件开发风险。本文还引入了EM算法,以提高对软件项目变体产生的隐藏节点的生成能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analyzing Software System Quality Risk Using Bayesian Belief Network
Uncertainty during the period of software project development often brings huge risks to contractors and clients. Developing an effective method to predict the cost and quality of software projects based on facts such as project characteristics and two-side cooperation capability at the beginning of the project can aid us in finding ways to reduce the risks. Bayesian belief network (BBN) is a good tool for analyzing uncertain consequences, but it is difficult to produce precise network structure and conditional probability table. In this paper, we build up the network structure by Delphi method for conditional probability table learning, and learn to update the probability table and confidence levels of the nodes continuously according to application cases, which would subsequently make the evaluation network to have learning abilities, and to evaluate the software development risks in organizations more accurately. This paper also introduces the EM algorithm to enhance the ability in producing hidden nodes caused by variant software projects.
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