RDM

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(Big idea)
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Describe the tool, concept or theory and explain its purpose. The section should reflect the current state of the art on the topic
 
Describe the tool, concept or theory and explain its purpose. The section should reflect the current state of the art on the topic
  
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=== Historical background ===
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Decision-making under uncertainty is not a new problem, but the way to approach and handle these often complex issues has changed over time. RDM has become one of the most common approaches to handle decision making under uncertainty. The first person to describe the RDM methodology was Robert J, Lempert in 2000. He questioned whether it wasn't better to seek for a robust solution rather than trying to predict the future and then choose the solution that fits the predicted future best. He disagreed because he stated that ''"the quest for prediction probably fills some deep human need. Even though the accuracy of most predictions has proven to be poor"''.
  
 
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<ref name="Lempert2000">Lempert R.J., Schlesinger M. (2000) Robust strategies for abating climate change. Climatic Change, Springer Netherlands, Volume 45, Page 387–401, DOI: 10.1023/a:1005698407365 </ref>
  
 
== Application ==
 
== Application ==

Revision as of 13:19, 15 February 2021

Contents

Abstract

Robust decision-making (RDM), is a new and innovative methodology in the science of decision support. The RDM framework is a key tool in decision-making processes under deep uncertainty and provides decision-makers with a method to make a plan for the future without having to predict it. When decision-makers have to make long-term decisions they're often called upon to anticipate future needs, resources and circumstances. The problem is that decisions made on predictions are less reliable the farther the prediction reach forward in time, as time entails the prediction to become more vulnerable to uncertainty. This uncertainty could e.g. be unforeseen economic crashes terrorism attacks, political instability, climate change, chains of actions or reactions leading to more possible outcomes than a single prediction can handle. In order to handle a large amount of possible futures, RDM uses computer simulations and advanced modelling techniques to stress-test strategies not only against one predicted future but against thousands or millions of possible futures [1]. Thus the RDM framework is used for Decision Making under Deep Uncertainty (DMDU) [2]. The main purpose of RDM is not to make a better prediction but through its concepts and processes to contribute with knowledge for the decision-maker to be able to design more robust strategies, that perform no matter what the future holds.

This paper will go more in-depth with the history of RDM, the theory behind RDM and it's purpose. Further guidance on how RDM is implemented and used, as well as an analysis of when RDM is applicable, will be presented. Finally, a critical reflection on RDM will seek to find and enlighten the limitations of RDM.


Big idea

Describe the tool, concept or theory and explain its purpose. The section should reflect the current state of the art on the topic

Historical background

Decision-making under uncertainty is not a new problem, but the way to approach and handle these often complex issues has changed over time. RDM has become one of the most common approaches to handle decision making under uncertainty. The first person to describe the RDM methodology was Robert J, Lempert in 2000. He questioned whether it wasn't better to seek for a robust solution rather than trying to predict the future and then choose the solution that fits the predicted future best. He disagreed because he stated that "the quest for prediction probably fills some deep human need. Even though the accuracy of most predictions has proven to be poor".

[3]

Application

Provide guidance on how to use the tool, concept or theory and when it is applicable

Step-by-Step guide

  • Structure problem
  • Choose candidate strategy
  • Evaluate strategy against large ensemble of scenarios
  • Characterize vulnerabilities
  • Identify and assess options for ameliorationg vulnerabilities


[4]

[5]

Limitations

Critically reflect on the tool/concept/theory. When possible, substantiate your claims with literature


Annotated bibliography

Provide key references (3-10), where a reader can find additional information on the subject.


Bibliography

  1. Lempert R.J. (2019) Robust Decision Making (RDM). In: Marchau V., Walker W., Bloemen P., Popper S. (eds) Decision Making under Deep Uncertainty. Springer, Cham. https://doi.org/10.1007/978-3-030-05252-2_2.
  2. Walker W.E., Lempert R.J., Kwakkel J.H. (2013) Deep Uncertainty. In: Gass S.I., Fu M.C. (eds) Encyclopedia of Operations Research and Management Science. Springer, Boston, MA. https://doi.org/10.1007/978-1-4419-1153-7_1140
  3. Lempert R.J., Schlesinger M. (2000) Robust strategies for abating climate change. Climatic Change, Springer Netherlands, Volume 45, Page 387–401, DOI: 10.1023/a:1005698407365
  4. Lempert R.J., Groves D.G. (2010) Identifying and evaluating robust adaptive policy responses to climate change for water management agencies in the American west, Technological Forecasting and Social Change, Volume 77, Issue 6, Pages 960-974, ISSN 0040-1625, https://doi.org/10.1016/j.techfore.2010.04.007.
  5. Lempert R.J., Groves D.G., Popper S.W., Bankes S.S. (2016) A General, Analytic Method for Generating Robust Strategies and Narrative Scenarios, Volume 52, Issue 4, https://doi-org.proxy.findit.dtu.dk/10.1287/mnsc.1050.0472.

https://findit.dtu.dk/en/catalog/2281533929 - 7.2.1 Robust Decision Making

https://www.tandfonline.com/doi/abs/10.1080/09544820010031580 - Robust decision-making for engineering design

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