In this paper, we show how a possibilistic description of uncertainty arises very naturally in statistical data analysis. In combination with recent results in inverse uncertainty propagation and the consistent aggregation of marginal possibility distributions, this estimation procedure enables a very general approach to possibilistic identification problems in the framework of imprecise probabilities, i.e. the non-parametric estimation of possibility distributions of uncertain variables from data with a clear interpretation
PSerr002International audienceAn acknowledged interpretation of possibility distributions in quantit...
AbstractThe paper presents a possibility theory based formulation of one-parameter estimation that u...
Possibilistic logic is an important framework for rep-resenting and reasoning with uncertain and inc...
International audienceAn acknowledged interpretation of possibility distributions in quantitative po...
Machine learning, and more specifically regression, usually focuses on the search for a precise mode...
International audienceNumerical possibility distributions can encode special convex families of prob...
In real-world problems, input data may be pervaded with uncertainty. In this paper, we investigate t...
Naive Bayesian Classifiers, which rely on independence hypotheses, together with a normality assumpt...
We demonstrate a theory for evaluating the likelihood of a probability by way of possibility distrib...
Possibility theory provides a formal system for support representation and combination appropriate f...
Several transformations from probabilities to possibilities have been proposed. In par-ticular, Dubo...
International audienceThe main advances regarding the deep connections between probability and possi...
International audienceMachine learning, and more specifically regression, usually focuses on the sea...
In many real-world problems, input data may be pervaded with uncertainty. Naive possibilistic classi...
This proposal is to do basic research on the use of possibility theory to represent uncertainty in m...
PSerr002International audienceAn acknowledged interpretation of possibility distributions in quantit...
AbstractThe paper presents a possibility theory based formulation of one-parameter estimation that u...
Possibilistic logic is an important framework for rep-resenting and reasoning with uncertain and inc...
International audienceAn acknowledged interpretation of possibility distributions in quantitative po...
Machine learning, and more specifically regression, usually focuses on the search for a precise mode...
International audienceNumerical possibility distributions can encode special convex families of prob...
In real-world problems, input data may be pervaded with uncertainty. In this paper, we investigate t...
Naive Bayesian Classifiers, which rely on independence hypotheses, together with a normality assumpt...
We demonstrate a theory for evaluating the likelihood of a probability by way of possibility distrib...
Possibility theory provides a formal system for support representation and combination appropriate f...
Several transformations from probabilities to possibilities have been proposed. In par-ticular, Dubo...
International audienceThe main advances regarding the deep connections between probability and possi...
International audienceMachine learning, and more specifically regression, usually focuses on the sea...
In many real-world problems, input data may be pervaded with uncertainty. Naive possibilistic classi...
This proposal is to do basic research on the use of possibility theory to represent uncertainty in m...
PSerr002International audienceAn acknowledged interpretation of possibility distributions in quantit...
AbstractThe paper presents a possibility theory based formulation of one-parameter estimation that u...
Possibilistic logic is an important framework for rep-resenting and reasoning with uncertain and inc...