AbstractThis paper discusses some models of Imprecise Probability Theory obtained by propagating uncertainty in risk analysis when some input parameters are stochastic and perfectly observable, while others are either random or deterministic, but the information about them is partial and is represented by possibility distributions. Our knowledge about the probability of events pertaining to the output of some function of interest from the risk analysis model can be either represented by a fuzzy probability or by a probability interval. It is shown that this interval is the average cut of the fuzzy probability of the event, thus legitimating the propagation method. Besides, several independence assumptions underlying the joint probability–po...
International audienceThis paper presents and studies in detail a hybrid method of uncertainty propa...
International audienceThis paper presents and studies in detail a hybrid method of uncertainty propa...
Based on possibility theory and multi-valued logic and taking inspiration from the seminal work in p...
International audienceNumerical possibility distributions can encode special convex families of prob...
International audiencePossibility theory was coined by L.A. Zadeh in the late seventies as an approa...
bbInternational audiencePossibility theory is a representation framework general enough to model var...
Plenary talk at IFSA 2005, Beijing, China.International audiencePossibility theory is a simple uncer...
Since the appearance of the first paper on fuzzy sets proposed by Zadeh in 1965, the relationship b...
International audienceThe two main uncertainty representations in the literature that tolerate impre...
Uncertainties enter into a complex problem from many sources: variability, errors, and lack of knowl...
AbstractThe paper presents a possibility theory based formulation of one-parameter estimation that u...
* This paper is supported by CICYT (Spain) under Project TIN 2005-08943-C02-01.The purpose of this p...
Recent developments in Soft Computing and StatisticsInternational audienceProbability theory has bee...
International audienceDue to its major focus on knowledge representation and reasoning, artificial i...
Abstract-- Possibility is now a well-established theory to deal with uncertainty as well as the theo...
International audienceThis paper presents and studies in detail a hybrid method of uncertainty propa...
International audienceThis paper presents and studies in detail a hybrid method of uncertainty propa...
Based on possibility theory and multi-valued logic and taking inspiration from the seminal work in p...
International audienceNumerical possibility distributions can encode special convex families of prob...
International audiencePossibility theory was coined by L.A. Zadeh in the late seventies as an approa...
bbInternational audiencePossibility theory is a representation framework general enough to model var...
Plenary talk at IFSA 2005, Beijing, China.International audiencePossibility theory is a simple uncer...
Since the appearance of the first paper on fuzzy sets proposed by Zadeh in 1965, the relationship b...
International audienceThe two main uncertainty representations in the literature that tolerate impre...
Uncertainties enter into a complex problem from many sources: variability, errors, and lack of knowl...
AbstractThe paper presents a possibility theory based formulation of one-parameter estimation that u...
* This paper is supported by CICYT (Spain) under Project TIN 2005-08943-C02-01.The purpose of this p...
Recent developments in Soft Computing and StatisticsInternational audienceProbability theory has bee...
International audienceDue to its major focus on knowledge representation and reasoning, artificial i...
Abstract-- Possibility is now a well-established theory to deal with uncertainty as well as the theo...
International audienceThis paper presents and studies in detail a hybrid method of uncertainty propa...
International audienceThis paper presents and studies in detail a hybrid method of uncertainty propa...
Based on possibility theory and multi-valued logic and taking inspiration from the seminal work in p...