Five Things You Should Know about Cost Overrun

Flyvbjerg, Bent, Ansar, Atif, Budzier, Alexander, Buhl, Soren L., Cantarelli, Chantal, Garbuio, Massimo, Glenting, Carsten, Skamris Holm, Mette K., Lovallo, Dan, Lunn, Daniel, Molin, Eric J. E., Ronnest, Arne, Stewart, Allison and van Wee, Bert (2018) Five Things You Should Know about Cost Overrun. Transportation Research Part A: Policy and Practice, 118. pp. 174-190.

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This paper gives an overview of good and bad practice for understanding and curbing cost overrun in large capital investment projects, with a critique of Love and Ahiaga-Dagbui (2018) as point of departure. Good practice entails: (a) Consistent definition and measurement of overrun; in contrast to mixing inconsistent baselines, price levels, etc. (b) Data collection that includes all valid and reliable data; as opposed to including idiosyncratically sampled data, data with removed outliers, non-valid data from consultancies, etc. (c) Recognition that cost overrun is systemically fat-tailed; in contrast to understanding overrun in terms of error and randomness. (d) Acknowledgment that the root cause of cost overrun is behavioral bias; in contrast to explanations in terms of scope changes, complexity, etc. (e) De-biasing cost estimates with reference class forecasting or similar methods based in behavioral science; as opposed to conventional methods of estimation, with their century-long track record of inaccuracy and systemic bias. Bad practice is characterized by violating at least one of these five points. Love and Ahiaga-Dagbui violate all five. In so doing, they produce an exceptionally useful and comprehensive catalog of the many pitfalls that exist, and must be avoided, for properly understanding and curbing cost overrun.

Item Type: Article
Keywords: Cost overrun, Cost underestimation, Cost forecasting, Root causes of cost overrun, Behavioral science, Optimism bias, Strategic misrepresentation, Delusion, Deception, Moral hazard, Agency, Reference class forecasting, De-biasing
Subject(s): Project management
Date Deposited: 18 Sep 2018 13:32
Last Modified: 18 Sep 2018 13:32

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