Reducing risks in megaprojects: The potential of reference class forecasting

Rebekka Baerenbold
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引用次数: 0

Abstract

Large infrastructure projects often suffer from cost and schedule overruns, mainly due to optimism bias and strategic misrepresentation. Reference class forecasting (RCF) offers a potential remedy. This study presents a comprehensive analysis of the RCF literature with the aim of providing practitioners with key insights and identifying areas for future research. Through a review of 41 selected papers, the paper shows that the effectiveness of RCF is mainly applicable to large-scale projects and depends on the definition of the reference class. The paper calls for the development of an empirically based framework for reference class formation and urges the exploration of RCF's adaptability across industries, challenging the current one-size-fits-all approach. Theoretically, the paper critically assesses the current applications of RCF, while practically it outlines directions for future research and improvements. Overall, the study emphasises the need for detailed, data-driven methodologies and highlights their potential for risk management in projects worldwide.

减少大型项目中的风险:参考类预测的潜力
大型基础设施项目经常遭受成本和进度超支的困扰,这主要是由于乐观主义偏见和战略错误。参考类预测(RCF)提供了一种潜在的补救方法。本研究对RCF文献进行了全面分析,旨在为从业者提供关键见解并确定未来研究的领域。通过对选取的41篇论文的回顾,本文发现RCF的有效性主要适用于大型项目,并取决于参考类的定义。本文呼吁开发一个基于经验的参考类形成框架,并敦促探索RCF的跨行业适应性,挑战当前的一刀切方法。理论上,本文批判性地评估了RCF的当前应用,而实际上,它概述了未来研究和改进的方向。总体而言,该研究强调了对详细的、数据驱动的方法的需求,并强调了它们在全球项目风险管理中的潜力。
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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CiteScore
6.70
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