International audienceCausal diagnosis deals with the search for plausible causes which may have produced observed effects. Knowledge about possible effects of a malfunction on a given attribute is represented by a possibility distribution, as well as the possible values of an observed attribute (giving the imprecision of the observation). Any kind of attributes (binary, numerical, etc.) is allowed. In this paper, we restrict to single-fault diagnosis. Two main indices, respectively based on consistency and on abduction, enable one to discriminate the malfunctions. The case where one deals with imprecise information only is first discussed and exemplified. The extension to information pervaded with uncertainty is then studied. Refinements o...
It is argued that causal understanding originates in experiences of acting on objects. Such experien...
AbstractThe mathematical foundations of model-based diagnostics or diagnosis from first principles h...
AbstractA definition for similarity between possibility distributions is introduced and discussed as...
International audienceThis paper presents a general approach to diagnosis in a relational setting wh...
International audienceTracking malfunctions in reasonable time on an engine dyno test bench is becom...
Classical model-based diagnosis uses a model of the system to infer diagnoses – explanations – of a ...
Possibilistic abductive reasoning is particularly suited for diagnostic problem solving affected by ...
International audienceTo estimate the missing values of an attribute in the records of a dataset, al...
One of the problems of the recent approaches to problem solving based on deep knowledge is the lack ...
AbstractAmong the several representations of uncertainty, possibility theory allows also for the man...
© Springer International Publishing Switzerland 2014. Possibility theory is applied to introduce and...
The paper concerns methods of representation of uncertainty and imprecision in successful medical su...
International audienceIn this paper, we study how to explain to end-users the inference results of p...
Model-based diagnosis is the field of research concerned with the problem of finding faults in syste...
International audienceThis paper proposes a general approach to diagnosis based on fuzzy pattern mat...
It is argued that causal understanding originates in experiences of acting on objects. Such experien...
AbstractThe mathematical foundations of model-based diagnostics or diagnosis from first principles h...
AbstractA definition for similarity between possibility distributions is introduced and discussed as...
International audienceThis paper presents a general approach to diagnosis in a relational setting wh...
International audienceTracking malfunctions in reasonable time on an engine dyno test bench is becom...
Classical model-based diagnosis uses a model of the system to infer diagnoses – explanations – of a ...
Possibilistic abductive reasoning is particularly suited for diagnostic problem solving affected by ...
International audienceTo estimate the missing values of an attribute in the records of a dataset, al...
One of the problems of the recent approaches to problem solving based on deep knowledge is the lack ...
AbstractAmong the several representations of uncertainty, possibility theory allows also for the man...
© Springer International Publishing Switzerland 2014. Possibility theory is applied to introduce and...
The paper concerns methods of representation of uncertainty and imprecision in successful medical su...
International audienceIn this paper, we study how to explain to end-users the inference results of p...
Model-based diagnosis is the field of research concerned with the problem of finding faults in syste...
International audienceThis paper proposes a general approach to diagnosis based on fuzzy pattern mat...
It is argued that causal understanding originates in experiences of acting on objects. Such experien...
AbstractThe mathematical foundations of model-based diagnostics or diagnosis from first principles h...
AbstractA definition for similarity between possibility distributions is introduced and discussed as...