posted on 2003-07-01, 00:00authored byMark J. Schervish, Teddy Seidenfeld, Joseph B. Kadane, I Levi
We contrast three decision rules that extend Expected Utility to contexts
where a convex set of probabilities is used to depict uncertainty: Γ-Maximin,
Maximality, and E-admissibility. The rules extend Expected Utility theory
as they require that an option is inadmissible if there is another that carries
greater expected utility for each probability in a (closed) convex set. If the
convex set is a singleton, then each rule agrees with maximizing expected
utility. We show that, even when the option set is convex, this pairwise comparison
between acts may fail to identify those acts which are Bayes for some
probability in a convex set that is not closed. This limitation affects two of
the decision rules but not E-admissibility, which is not a pairwise decision
rule. E-admissibility can be used to distinguish between two convex sets of
probabilities that intersect all the same supporting hyperplanes.