Project Portfolio Risk Response Selection Using Bayesian Belief Networks

IF 0.8 Q4 MANAGEMENT
G. Mokhtari, Fatemeh Aghagoli
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引用次数: 10

Abstract

Risk identification, impact assessment, and response planning constitute three building blocks of project risk management. Correspondingly, three types of interactions could be envisioned between risks, between impacts of several risks on a portfolio component, and between several responses. While the interdependency of risks is a well-recognized issue, the other two types of interactions remain unacknowledged in the risk response planning literature. This research suggests a Bayesian belief network for modeling portfolio risks, their impacts, and responses. There are three kinds of nodes in this network: nodes representing portfolio risks, nodes corresponding to risk impacts on each objective of each portfolio component, and nodes showing response actions. The problem is to decide which responses are to be selected. For this purpose, an optimization model is proposed that minimizes the sum of both residual risk effects on portfolio component objectives and response implementation costs. Subsequently, a genetic algorithm is introduced to solve the model. A simple portfolio instance is also provided to illustrate the proposed model.
基于贝叶斯信念网络的项目组合风险响应选择
风险识别、影响评估和应对计划构成了项目风险管理的三个组成部分。相应地,风险之间、几个风险对投资组合组成部分的影响之间以及几个反应之间可以设想三种类型的相互作用。虽然风险的相互依存性是一个公认的问题,但在风险应对规划文献中,其他两种类型的相互作用仍未得到承认。这项研究提出了一个贝叶斯信念网络,用于建模投资组合风险、其影响和响应。该网络中有三种节点:代表投资组合风险的节点,对应于风险对每个投资组合组成部分的每个目标的影响的节点,以及显示响应行动的节点。问题在于决定要选择哪些响应。为此,提出了一个优化模型,该模型将剩余风险对投资组合组成目标的影响和响应实施成本的总和最小化。随后,引入遗传算法对模型进行求解。还提供了一个简单的投资组合实例来说明所提出的模型。
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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