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Probability and statistics / Numerical analysis / Probability theory / Analysis / Probability bounds analysis / Mathematical modeling / Operations research / Uncertainty quantification / Probability box / DempsterShafer theory / Uncertainty / Monte Carlo method
Date: 2015-11-02 10:32:02
Probability and statistics
Numerical analysis
Probability theory
Analysis
Probability bounds analysis
Mathematical modeling
Operations research
Uncertainty quantification
Probability box
DempsterShafer theory
Uncertainty
Monte Carlo method

L IVERPOOL U NIVERSITY M ASTER OF R ESEARCH D ECISION M AKING U NDER R ISK AND U NCERTAINTY Robust Probabilistic Risk/Safety Analysis

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Source URL: cgi.csc.liv.ac.uk

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