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Discovering Many-to-One Causality in Software Project Risk Analysis

机译:发现软件项目风险分析中的多对一因果关系

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Many risk factors affect software development and risk management has become one of the major activities in software development. Discovering causal directions among risk factors and project performance are important support for risk management. The Additive Noise Model (ANM) is an effective algorithm for discovering the direction on one-to-one causalities, but ineffective on many-to-one causalities which are frequent in software project risk analysis (SPRA) process. Thus we proposed a modified ANM with Conditional Probability Table (ANMCPT) to discover the causal direction among risk factors and project performance. The experimental results show our proposed algorithm is effective to discover the many-to-one causalities in SPRM on 498 collected software project data, and it performs better than other algorithms in the prediction with discovered causes of project performance, such as logistic regression, C4.5, Naïve Bayes, and general BNs. This study firstly presents an approach using ANM for many-to-one causality discovery in SPRA and then proves that it is an effective algorithm for analyzing the risk in software project.
机译:许多风险因素影响软件开发,而风险管理已成为软件开发中的主要活动之一。发现风险因素和项目绩效之间的因果关系是风险管理的重要支持。加性噪声模型(ANM)是一种用于发现一对一因果关系方向的有效算法,但对软件项目风险分析(SPRA)过程中经常出现的多对一因果关系无效。因此,我们提出了带有条件概率表(ANMCPT)的改进的ANM,以发现风险因素与项目绩效之间的因果关系。实验结果表明,本文提出的算法有效地发现了498个收集的软件项目数据中SPRM中的多对一因果关系,并且在预测项目性能的原因(如逻辑回归,C4)方面,其性能优于其他算法。 .5,朴素贝叶斯和一般BN。这项研究首先提出了一种使用ANM在SPRA中进行多对一因果关系发现的方法,然后证明了它是一种有效的软件项目风险分析算法。

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