Qualitative decision under uncertainty: back to expected utility

作者:

摘要

Different qualitative models have been proposed for decision under uncertainty in Artificial Intelligence, but they generally fail to satisfy the principle of strict Pareto dominance or principle of “efficiency”, in contrast to the classical numerical criterion—expected utility. Among the most prominent examples of qualitative models are the qualitative possibilistic utilities (QPU) and the order of magnitude expected utilities (OMEU). They are both appealing but inefficient in the above sense. The question is whether it is possible to reconcile qualitative criteria and efficiency. The present paper shows that the answer is yes, and that it leads to special kinds of expected utilities. It is also shown that although numerical, these expected utilities remain qualitative: they lead to different decision procedures based on min, max and reverse operators only, generalizing the leximin and leximax orderings of vectors.

论文关键词:Decision under uncertainty,Possibility theory,Expected utility,Leximax ordering,Leximin ordering

论文评审过程:Received 18 December 2004, Accepted 22 December 2004, Available online 1 February 2005.

论文官网地址:https://doi.org/10.1016/j.artint.2004.12.002