Improving scenario discovery by bagging random boxes

J. H. Kwakkel, S. C. Cunningham

Research output: Contribution to journalArticlepeer-review

10 Citations (Scopus)
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Scenario discovery is a model-based approach to scenario development under deep uncertainty. Scenario discovery relies on the use of statistical machine learning algorithms. The most frequently used algorithm is the Patient Rule Induction Method (PRIM). This algorithm identifies regions in an uncertain model input space that are highly predictive of model outcomes that are of interest. To identify these regions, PRIM uses a hill-climbing optimization procedure. This suggests that PRIM can suffer from the usual defects of hill climbing optimization algorithms, including local optima, plateaus, and ridges and valleys. In case of PRIM, these problems are even more pronounced when dealing with heterogeneously typed data. Drawing inspiration from machine learning research on random forests, we present an improved version of PRIM. This improved version is based on the idea of performing multiple PRIM analyses based on randomly selected features and combining these results using a bagging technique. The efficacy of the approach is demonstrated using three cases. Each of the cases has been published before and used PRIM. We compare the results found using PRIM with the results found using the improved version of PRIM. We find that the improved version is more robust to new data, can better cope with heterogeneously typed data, and is less prone to overfitting.
Original languageEnglish
Pages (from-to)124-134
Number of pages11
JournalTechnological Forecasting and Social Change
Early online date30 Jun 2016
Publication statusE-pub ahead of print - 30 Jun 2016


  • scenario discovery
  • robust decision making
  • exploratory modeling
  • deep uncertainty

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