International audienceLike Bayesian networks, possibilistic ones compactly encode joint uncertainty representations over a set of variables. Learning possibilistic networks from data in general and from imperfect or scarce data in particular, has not received enough attention. Indeed, only few works deal with learning the structure and the parameters of a possibilistic network from a dataset. This paper provides a preliminary comparative empirical evaluation of two approaches for learning the parameters of a possibilistic network from empirical data. The first method is a possibilistic approach while the second one first learns imprecise probability measures then transforms them into possibility distributions by means of probability-possibi...
AbstractA definition for similarity between possibility distributions is introduced and discussed as...
The creation of Bayesian networks often requires the specification of a large number of parameters, ...
AbstractPossibilistic networks and possibilistic logic are two standard frameworks of interest for r...
International audienceLike Bayesian networks, possibilistic ones compactly encode joint uncertainty ...
International audiencePossibilistic networks are belief graphical models based on possibility theory...
DUKE_HCERES2020There has been an ever-increasing interest in multidisciplinary research on represent...
International audiencePossibilistic networks are important tools for modelling and reasoning, especi...
AbstractAmong the several representations of uncertainty, possibility theory allows also for the man...
International audiencePossibilistic networks offer a qualitative approach for modeling epistemic unc...
This work fits within the framework of learning possibilistic networks, the possibilistic counterpar...
National audiencePossibilistic networks are important tools for modeling and reasoning, especially i...
. We introduce a method for inducing the structure of (causal) possibilistic networks from database...
International audiencePossibilistic networks offer a qualitative approach for modeling epistemic unc...
This section investigates graphical modeling as a powerful framework for drawing inferences under im...
AbstractA definition for similarity between possibility distributions is introduced and discussed as...
The creation of Bayesian networks often requires the specification of a large number of parameters, ...
AbstractPossibilistic networks and possibilistic logic are two standard frameworks of interest for r...
International audienceLike Bayesian networks, possibilistic ones compactly encode joint uncertainty ...
International audiencePossibilistic networks are belief graphical models based on possibility theory...
DUKE_HCERES2020There has been an ever-increasing interest in multidisciplinary research on represent...
International audiencePossibilistic networks are important tools for modelling and reasoning, especi...
AbstractAmong the several representations of uncertainty, possibility theory allows also for the man...
International audiencePossibilistic networks offer a qualitative approach for modeling epistemic unc...
This work fits within the framework of learning possibilistic networks, the possibilistic counterpar...
National audiencePossibilistic networks are important tools for modeling and reasoning, especially i...
. We introduce a method for inducing the structure of (causal) possibilistic networks from database...
International audiencePossibilistic networks offer a qualitative approach for modeling epistemic unc...
This section investigates graphical modeling as a powerful framework for drawing inferences under im...
AbstractA definition for similarity between possibility distributions is introduced and discussed as...
The creation of Bayesian networks often requires the specification of a large number of parameters, ...
AbstractPossibilistic networks and possibilistic logic are two standard frameworks of interest for r...