Non-probabilistic approaches to decision making have been proposed for situations in which an individual does not have enough information to assess probabilities over an uncertainty. One non-probabilistic method is to use intervals in which an uncertainty has a minimum and maximum but nothing is assumed about the relative likelihood of any value within the interval. The Hurwicz decision rule in which a parameter trades off between pessimism and optimism generalizes the current rules for making decisions with intervals. This article analyzes the relationship between intervals based on the Hurwicz rule and traditional decision analysis using a few probability distributions and an exponential utility functions. This article shows that the Hurw...
The original publication is available at www.springer.comAbstract: A substantial body of empirical e...
AbstractDecision making theory further improved in the modern world. However the decision making the...
AbstractIf we know the probabilities p1,…,pn of different situations s1,…,sn, then we can choose a d...
If we know the exact consequences of each action, then we can select an action with the largest valu...
If we know the exact consequences of each action, then we can select an action with the largest valu...
In many real-life situations, we need to make decisions in situations when we do not have full infor...
AbstractIn real-life decision analysis, the probabilities and utilities of consequences are in gener...
If we know the probabilities p1 ; : : : ; pn of different situations s1 ; : : : ; sn , then we can c...
In many situations, e.g., in financial and economic decision making, the decision results either in ...
AbstractThis paper deals with the impact of information on the decisions of an agent whose beliefs a...
In situations when we know the probabilities of all possible consequences, traditional decision theo...
AbstractEvaluation of decision trees in which imprecise information prevails is complicated. Especia...
International audienceSchmeidler [1986], [1989] famously used his nonadditive probability model to d...
To make a decision, we must find out the user\u27s preference, and help the user select an alternati...
AbstractThe impact of the decision maker features on decision making process sometimes contradicts w...
The original publication is available at www.springer.comAbstract: A substantial body of empirical e...
AbstractDecision making theory further improved in the modern world. However the decision making the...
AbstractIf we know the probabilities p1,…,pn of different situations s1,…,sn, then we can choose a d...
If we know the exact consequences of each action, then we can select an action with the largest valu...
If we know the exact consequences of each action, then we can select an action with the largest valu...
In many real-life situations, we need to make decisions in situations when we do not have full infor...
AbstractIn real-life decision analysis, the probabilities and utilities of consequences are in gener...
If we know the probabilities p1 ; : : : ; pn of different situations s1 ; : : : ; sn , then we can c...
In many situations, e.g., in financial and economic decision making, the decision results either in ...
AbstractThis paper deals with the impact of information on the decisions of an agent whose beliefs a...
In situations when we know the probabilities of all possible consequences, traditional decision theo...
AbstractEvaluation of decision trees in which imprecise information prevails is complicated. Especia...
International audienceSchmeidler [1986], [1989] famously used his nonadditive probability model to d...
To make a decision, we must find out the user\u27s preference, and help the user select an alternati...
AbstractThe impact of the decision maker features on decision making process sometimes contradicts w...
The original publication is available at www.springer.comAbstract: A substantial body of empirical e...
AbstractDecision making theory further improved in the modern world. However the decision making the...
AbstractIf we know the probabilities p1,…,pn of different situations s1,…,sn, then we can choose a d...