Partially ordered preferences generally lead to choices that do not abide by standard expected utility guidelines; often such preferences are revealed by imprecision in probability values. We investigate five criteria for strategy selection in decision trees with imprecision in probabilities: “extensive” Γ-maximin and Γ-maximax, interval dominance, maximality and E-admissibility. We present algorithms that generate strategies for all these criteria; our main contribution is an algorithm for Eadmissibility that runs over admissible strategies rather than over sets of probability distributions
Assume we want to show that (a) the cost of any randomized decision tree computing a given Boolean f...
Probability trees are decision trees that predict class probabilities rather than the most likely cl...
Probability trees (or Probability Estimation Trees, PET's) are decision trees with probability distr...
This paper presents new insights and novel algorithms for strategy selection in sequential decision ...
Nesta tese, exploramos tomada de decisão com preferências parcialmente ordenadas: dadas duas ações, ...
AbstractEvaluation of decision trees in which imprecise information prevails is complicated. Especia...
Abstract. This paper is devoted to sequential decision problems with imprecise probabilities. We stu...
AbstractEvaluation of decision trees in which imprecise information prevails is complicated. Especia...
Abstract. We study impurity-based decision tree algorithms such as CART, C4.5, etc., so as to better...
Various ways for decision making with imprecise probabilities—admissibility, max-imal expected utili...
International audienceThis paper is devoted to sequential decision making under uncertainty, in the ...
Random decision tree is an ensemble of decision trees. The feature at any node of a tree in the ense...
This paper is devoted to sequential decision mak-ing under uncertainty, in the multi-prior framework...
Abstract We provide a model of decision making under uncertainty in which the decision maker reacts ...
This essay considers decision-theoretic foundations for robust Bayesian statistics. We modify the ap...
Assume we want to show that (a) the cost of any randomized decision tree computing a given Boolean f...
Probability trees are decision trees that predict class probabilities rather than the most likely cl...
Probability trees (or Probability Estimation Trees, PET's) are decision trees with probability distr...
This paper presents new insights and novel algorithms for strategy selection in sequential decision ...
Nesta tese, exploramos tomada de decisão com preferências parcialmente ordenadas: dadas duas ações, ...
AbstractEvaluation of decision trees in which imprecise information prevails is complicated. Especia...
Abstract. This paper is devoted to sequential decision problems with imprecise probabilities. We stu...
AbstractEvaluation of decision trees in which imprecise information prevails is complicated. Especia...
Abstract. We study impurity-based decision tree algorithms such as CART, C4.5, etc., so as to better...
Various ways for decision making with imprecise probabilities—admissibility, max-imal expected utili...
International audienceThis paper is devoted to sequential decision making under uncertainty, in the ...
Random decision tree is an ensemble of decision trees. The feature at any node of a tree in the ense...
This paper is devoted to sequential decision mak-ing under uncertainty, in the multi-prior framework...
Abstract We provide a model of decision making under uncertainty in which the decision maker reacts ...
This essay considers decision-theoretic foundations for robust Bayesian statistics. We modify the ap...
Assume we want to show that (a) the cost of any randomized decision tree computing a given Boolean f...
Probability trees are decision trees that predict class probabilities rather than the most likely cl...
Probability trees (or Probability Estimation Trees, PET's) are decision trees with probability distr...