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Software project risk probability assessment based on dynamic Bayesian network

机译:基于动态贝叶斯网络的软件项目风险概率评估

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Traditional Bayesian network (BN) can only have static analysis which could not reflect the impact of time factors on project risk adequately. For this reason, a software project risk probability assessment model based on dynamic Bayesian network (DBN) is proposed, which combines time series theory and Bayesian theory together to express the risk factor status change relationship between different time segments through probability and directed acyclic graph. Moreover, in the case of lack of sample data, using Leaky Noisy-or gate model to calculate the conditional probability of the nodes will come to a more objective evaluation result. Compared with the assessment results of static Bayesian network (SBN), dynamic Bayesian assessment model improves the accuracy of risk probability assessment of software projects, and provides a more scientific basis for risk control.
机译:传统的贝叶斯网络(BN)只能具有静态分析,这无法反映出充分影响项目风险的时间因素。出于这个原因,提出了一种基于动态贝叶斯网络(DBN)的软件项目风险概率评估模型,将时间序列理论和贝叶斯理论结合在一起,以通过概率和定向非循环图表示不同时间段之间的风险因素状态改变关系。此外,在缺乏样本数据的情况下,使用泄漏的噪声或门模型来计算节点的条件概率将会到更客观的评估结果。与静态贝叶斯网络(SBN)的评估结果相比,动态贝叶斯评估模型提高了软件项目风险概率评估的准确性,为风险控制提供了更科学的基础。

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