AbstractA method of instance-based learning is introduced which makes use of possibility theory and fuzzy sets. Particularly, a possibilistic version of the similarity-guided extrapolation principle underlying the instance-based learning paradigm is proposed. This version is compared to the commonly used probabilistic approach from a methodological point of view. Moreover, aspects of knowledge representation such as the modeling of uncertainty are discussed. Taking the possibilistic extrapolation principle as a point of departure, an instance-based learning procedure is outlined which includes the handling of incomplete information, methods for reducing storage requirements and the adaptation of the influence of stored cases according to th...
A semantics for possibilistic evidential reasoning is presented based on similarity with paradigmati...
This dissertation introduces a framework for specifying instance-based algorithms that can solve sup...
In many real-world problems, input data may be pervaded with uncertainty. Naive possibilistic classi...
AbstractA method of instance-based learning is introduced which makes use of possibility theory and ...
International audienceA possibilistic framework for instance-based prediction is presented which for...
bbInternational audienceThis paper extends the possibilistic approach to instance-based reasoning th...
International audienceThe paper presents a formal framework of instance-based prediction in which th...
Expanded and updated version of a paper with the same title presented at the 8th International Confe...
Classification models usually associate one class for each new instance. This kind of prediction doe...
AbstractAmong the several representations of uncertainty, possibility theory allows also for the man...
Naïve Bayesian classifiers are well-known for their simplicity and efficiency. They rely on independ...
International audienceIn this study, an approach for image classification based on possibilistic sim...
International audienceThe “similar problem-similar solution” hypothesis underlying case-based reason...
International audienceThe "similar problem-similar solution" hypothesis underlying case-based reason...
International audienceClassification models usually associate one class for each new instance. This ...
A semantics for possibilistic evidential reasoning is presented based on similarity with paradigmati...
This dissertation introduces a framework for specifying instance-based algorithms that can solve sup...
In many real-world problems, input data may be pervaded with uncertainty. Naive possibilistic classi...
AbstractA method of instance-based learning is introduced which makes use of possibility theory and ...
International audienceA possibilistic framework for instance-based prediction is presented which for...
bbInternational audienceThis paper extends the possibilistic approach to instance-based reasoning th...
International audienceThe paper presents a formal framework of instance-based prediction in which th...
Expanded and updated version of a paper with the same title presented at the 8th International Confe...
Classification models usually associate one class for each new instance. This kind of prediction doe...
AbstractAmong the several representations of uncertainty, possibility theory allows also for the man...
Naïve Bayesian classifiers are well-known for their simplicity and efficiency. They rely on independ...
International audienceIn this study, an approach for image classification based on possibilistic sim...
International audienceThe “similar problem-similar solution” hypothesis underlying case-based reason...
International audienceThe "similar problem-similar solution" hypothesis underlying case-based reason...
International audienceClassification models usually associate one class for each new instance. This ...
A semantics for possibilistic evidential reasoning is presented based on similarity with paradigmati...
This dissertation introduces a framework for specifying instance-based algorithms that can solve sup...
In many real-world problems, input data may be pervaded with uncertainty. Naive possibilistic classi...