Lessons for Decision-Analysis Practice from the Automotive Industry

IF 1.1 4区 管理学 Q4 MANAGEMENT Informs Journal on Applied Analytics Pub Date : 2022-12-01 DOI:10.1287/inte.2022.1151
R. Bordley
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Abstract

Decision analysis is widely used in making decisions involving low-probability, high-consequence events (e.g., drug discovery, oil and gas drilling, risk reduction). This paper focuses on the automotive industries in which more intermediate uncertainties are important. As in any large organization, different members of the organization have different information and different incentives. In this setting, influence diagrams proved invaluable in identifying the information creditable models need, discovering new distinctions of high value, developing win/win compromises, and enabling higher-value technology transfer. However, these examples also highlight the need for more research on addressing motivational biases within organizations. History: This paper was refereed. This paper was accepted for the Special Issue of INFORMS Journal on Applied Analytics—Decision Analysis
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汽车行业决策分析实践的经验教训
决策分析广泛用于涉及低概率、高后果事件的决策(例如,药物发现、石油和天然气钻探、风险降低)。本文的重点是汽车行业,其中更多的中间不确定性是重要的。与任何大型组织一样,组织中不同的成员拥有不同的信息和不同的激励。在这种情况下,影响图在确定可信模型所需的信息、发现高价值的新区别、制定双赢妥协以及实现高价值技术转让方面证明是无价的。然而,这些例子也强调了对解决组织内部动机偏见进行更多研究的必要性。历史:本文被审稿。这篇论文被美国INFORMS杂志的应用分析特刊——决策分析所接受
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