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SMIC Prob-Expert

SMIC Prob-Expert — from the French Systeme et Matrices d'Impacts Croises, Systems and Matrices of Cross-Impacts — is the probabilistic cross-impact method in Michel Godet's la prospective toolkit. It takes a small set of fundamental hypotheses about the future and asks experts for both the simple probability that each hypothesis comes true and the conditional probabilities linking the hypotheses to one another. Because experts' raw estimates are rarely mutually consistent, SMIC's core is a quadratic optimisation that adjusts them minimally into a coherent joint probability distribution over the 2^n possible combinations of the hypotheses. Each combination is an image of the future — a scenario — and the corrected, or net, probabilities rank these images from most to least likely. The method thereby turns scattered expert opinion into a probabilistically weighted set of scenarios, identifying the few core futures that concentrate most of the probability mass.

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Sources

  1. Godet, M. (2006). Creating Futures: Scenario Planning as a Strategic Management Tool (2nd ed.). Economica. ISBN: 9782717852448

How to cite this page

ScholarGate. (2026, June 23). SMIC Prob-Expert (Cross-Impact Systems and Matrices). ScholarGate. https://scholargate.app/en/futures-foresight-studies/smic-prob-expert

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ScholarGateSMIC Prob-Expert (SMIC Prob-Expert (Cross-Impact Systems and Matrices)). Retrieved 2026-06-24 from https://scholargate.app/en/futures-foresight-studies/smic-prob-expert · Dataset: https://doi.org/10.5281/zenodo.20539026