The book presents an axiomatic approach to the problems of prediction, classification, and statistical learning. Using methodologies from axiomatic decision theory, and, in particular, the authors' case-based decision theory, the present studies attempt to ask what inductive conclusions can be derived from existing databases. It is shown that simple consistency rules lead to similarity-weighted aggregation, akin to kernel-based methods. It is suggested that the similarity function be estimated from the data. The incorporation of rule-based reasoning is discussed
This work takes place in the general context of the construction of a prediction for decision suppor...
Gilboa and Schmeidler provide a new paradigm for modeling decision making under uncertainty. Case-ba...
International audienceThis paper suggests that decision-making under uncertainty is, at least partly...
The book presents an axiomatic approach to the problems of prediction, classification, and statistic...
International audienceThe "similar problem-similar solution" hypothesis underlying case-based reason...
This paper describes a generic framework for explaining the prediction of probabilistic machine lear...
International audienceThe “similar problem-similar solution” hypothesis underlying case-based reason...
This paper clarifies the relation between case-based prediction and analogical transfer. Case-based ...
We suggest an axiomatic approach to the way in which past cases, or observations, are or should be u...
The transferable belief model (TBM) is a model to represent quantified uncertainties based on belief...
International audienceIn this paper, we consider a decision maker who tries to learn the distributio...
International audienceA predictor is asked to rank eventualities according to their plausibility, ba...
A predictor is asked to rank eventualities according to their plau-sibility, based on past cases. We...
A predictive mathematical model is presented for the expected case-driven transfer of classification...
This paper provides two axiomatic derivations of a case-based decision rule. Each axiomatization sho...
This work takes place in the general context of the construction of a prediction for decision suppor...
Gilboa and Schmeidler provide a new paradigm for modeling decision making under uncertainty. Case-ba...
International audienceThis paper suggests that decision-making under uncertainty is, at least partly...
The book presents an axiomatic approach to the problems of prediction, classification, and statistic...
International audienceThe "similar problem-similar solution" hypothesis underlying case-based reason...
This paper describes a generic framework for explaining the prediction of probabilistic machine lear...
International audienceThe “similar problem-similar solution” hypothesis underlying case-based reason...
This paper clarifies the relation between case-based prediction and analogical transfer. Case-based ...
We suggest an axiomatic approach to the way in which past cases, or observations, are or should be u...
The transferable belief model (TBM) is a model to represent quantified uncertainties based on belief...
International audienceIn this paper, we consider a decision maker who tries to learn the distributio...
International audienceA predictor is asked to rank eventualities according to their plausibility, ba...
A predictor is asked to rank eventualities according to their plau-sibility, based on past cases. We...
A predictive mathematical model is presented for the expected case-driven transfer of classification...
This paper provides two axiomatic derivations of a case-based decision rule. Each axiomatization sho...
This work takes place in the general context of the construction of a prediction for decision suppor...
Gilboa and Schmeidler provide a new paradigm for modeling decision making under uncertainty. Case-ba...
International audienceThis paper suggests that decision-making under uncertainty is, at least partly...