AbstractMost decision models for handling vague and imprecise information are unnecessarily restrictive since they do not admit for discrimination between different beliefs in different values. This is true for classical utility theory as well as for the various interval methods that have prevailed. To allow for more refined estimates, we suggest a framework designed for evaluating decision situations considering beliefs in sets of epistemically possible utility and probability functions, as well as relations between them. The various beliefs are expressed using different kinds of belief distributions. We show that the use of such distributions allows for representation principles not requiring too hard data aggregation, but still admitting...
This paper discusses how numerically imprecise information can be modelled and how a risk evaluation...
Recently, representations and methods aimed at analysing decision problems where probabilities and v...
Recently, representations and methods aimed at analysing decision problems where probabilities and v...
We present implemented concepts and algorithms for a simulation approach to decision evaluation with...
We present implemented concepts and algorithms for a simulation approach to decision evaluation with...
We present implemented concepts and algorithms for a simulation approach to decision evaluation with...
This paper discusses models of choice under imprecise objective proba-bilistic information featuring...
International audienceThis paper discusses models of choice under imprecise objective probabilistic ...
International audienceThis paper discusses models of choice under imprecise objective probabilistic ...
We present implemented concepts and algorithms for a simulation approach to decision evaluation with...
We present implemented concepts and algorithms for a simulation approach to decision evaluation with...
AbstractEvaluation of decision trees in which imprecise information prevails is complicated. Especia...
This paper discusses how numerically imprecise information can be modelled and how a risk evaluation...
This paper discusses how numerically imprecise information can be modelled and how a risk evaluation...
A qualitative counterpart to Von Neumann and Morgenstern's Expected Utility Theory of decision under...
This paper discusses how numerically imprecise information can be modelled and how a risk evaluation...
Recently, representations and methods aimed at analysing decision problems where probabilities and v...
Recently, representations and methods aimed at analysing decision problems where probabilities and v...
We present implemented concepts and algorithms for a simulation approach to decision evaluation with...
We present implemented concepts and algorithms for a simulation approach to decision evaluation with...
We present implemented concepts and algorithms for a simulation approach to decision evaluation with...
This paper discusses models of choice under imprecise objective proba-bilistic information featuring...
International audienceThis paper discusses models of choice under imprecise objective probabilistic ...
International audienceThis paper discusses models of choice under imprecise objective probabilistic ...
We present implemented concepts and algorithms for a simulation approach to decision evaluation with...
We present implemented concepts and algorithms for a simulation approach to decision evaluation with...
AbstractEvaluation of decision trees in which imprecise information prevails is complicated. Especia...
This paper discusses how numerically imprecise information can be modelled and how a risk evaluation...
This paper discusses how numerically imprecise information can be modelled and how a risk evaluation...
A qualitative counterpart to Von Neumann and Morgenstern's Expected Utility Theory of decision under...
This paper discusses how numerically imprecise information can be modelled and how a risk evaluation...
Recently, representations and methods aimed at analysing decision problems where probabilities and v...
Recently, representations and methods aimed at analysing decision problems where probabilities and v...