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FSS
2008

Representing parametric probabilistic models tainted with imprecision

13 years 4 months ago
Representing parametric probabilistic models tainted with imprecision
Numerical possibility theory, belief function have been suggested as useful tools to represent imprecise, vague or incomplete information. They are particularly appropriate in uncertainty analysis where information is typically tainted with imprecision or incompleteness. Based on their experience or their knowledge about a random phenomenon, experts can sometimes provide a class of distributions without being able to precisely specify the parameters of a probability model. Frequentists use two-dimensional Monte-Carlo simulation to account for imprecision associated with the parameters of probability models. They hence hope to discover how variability and imprecision interact. This paper presents the limitations and disadvantages of this approach and propose a fuzzy random variable approach to treat this kind of knowledge. Key words: Imprecise Probabilities, Possibility, Belief functions, Probability-Boxes, Monte-Carlo 2D, fuzzy random variable.
Cédric Baudrit, Didier Dubois, Nathalie Per
Added 10 Dec 2010
Updated 10 Dec 2010
Type Journal
Year 2008
Where FSS
Authors Cédric Baudrit, Didier Dubois, Nathalie Perrot
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