In his discussion of minimax decision rules, Savage (1954, p. 170) presents an ex-ample purporting to show that minimax applied to negative expected utility (referred to by Savage as “negative income”) is an inadequate decision criterion for statistics; he suggests the application of a minimax regret rule instead. The crux of Savage’s objection is the possibility that a decision maker would choose to ignore even “exten-sive ” information. More recently, Parmigiani (1992) has suggested that minimax regret suffers from the same flaw. He demonstrates the existence of “relevant ” experiments that a minimax regret agent would never pay a positive cost to observe. On closer inspection, I find that minimax regret is more resilient to this critique...
An important objective of empirical research on treatment response is to provide decision makers wit...
There are many situations in which individuals have a choice of whether or not to observe the eventu...
Decision makers must often base their decisions on incomplete (coarse) data. Recent research has sho...
In his discussion of minimax decision rules, Savage (1954, p. 170) presents an example purporting to...
This paper continues the investigation of minimax regret treatment choice initiated by Manski (2004)...
This paper applies the minimax regret criterion to choice between two treatments conditional on obse...
We consider decision problems under complete ignorance and extend the minimax regret principle to si...
We examine an adverse selection relationship in which the principal is unaware of the ex ante distri...
Our starting point is a setting where a decision maker's uncertainty is represented by a set of prob...
Background. A generalization of the minimax regret criterion is represented as even the best-assuran...
This paper introduces a new solution concept, a minimax regret equilibrium, which allows for the pos...
This paper studies the problem of treatment choice between a status quo treatment with a known outco...
We consider three competing normative theories of how to make choices when facing uncertainty: subj...
International audienceAbstractMost economists consider that the cases of negative information value ...
The goal of this paper is to analyze the relationship between the two notions of rationality devised...
An important objective of empirical research on treatment response is to provide decision makers wit...
There are many situations in which individuals have a choice of whether or not to observe the eventu...
Decision makers must often base their decisions on incomplete (coarse) data. Recent research has sho...
In his discussion of minimax decision rules, Savage (1954, p. 170) presents an example purporting to...
This paper continues the investigation of minimax regret treatment choice initiated by Manski (2004)...
This paper applies the minimax regret criterion to choice between two treatments conditional on obse...
We consider decision problems under complete ignorance and extend the minimax regret principle to si...
We examine an adverse selection relationship in which the principal is unaware of the ex ante distri...
Our starting point is a setting where a decision maker's uncertainty is represented by a set of prob...
Background. A generalization of the minimax regret criterion is represented as even the best-assuran...
This paper introduces a new solution concept, a minimax regret equilibrium, which allows for the pos...
This paper studies the problem of treatment choice between a status quo treatment with a known outco...
We consider three competing normative theories of how to make choices when facing uncertainty: subj...
International audienceAbstractMost economists consider that the cases of negative information value ...
The goal of this paper is to analyze the relationship between the two notions of rationality devised...
An important objective of empirical research on treatment response is to provide decision makers wit...
There are many situations in which individuals have a choice of whether or not to observe the eventu...
Decision makers must often base their decisions on incomplete (coarse) data. Recent research has sho...