In most theories of choice under uncertainty, decision-makers are assumed to evaluate acts in terms of subjective values attributed to consequences and probabilities assigned to events. Case-based decision theory (CBDT), proposed by Gilboa and Schmeidler, is fundamentally different, and in the tradition of reinforcement learning models. It has no state space and no concept of probability. An agent evaluates each available act in terms of the consequences he has experienced through choosing that act in previous decision problems that he perceives to be similar to his current problem. Gilboa and Schmeidler present CBDT as a complement to expected utility theory (EUT), applicable only when the state space is unknown. Accordingly, most experime...
Computational models of learning have proved largely successful in characterizing potential mechanis...
This paper proposes a new decision theory of how individuals make random errors when they compute th...
We conduct two experiments where subjects make a sequence of binary choices between risky and ambigu...
In most theories of choice under uncertainty, decision-makers are assumed to evaluate acts in terms ...
“The final publication is available at Springer via http://dx.doi.org/10.1007/s11238-015-9492-1”."We...
Gilboa and Schmeidler provide a new paradigm for modeling decision making under uncertainty. Case-ba...
We introduce a computer program which calculates an agent’s optimal behavior according to Case-based...
International audienceCase-Based Decision Theory (CBDT) is a theory of decision making under uncerta...
The theory of expected utility maximization (EUM) explains risk aversion as due to diminishing margi...
Case-based decision theory (CBDT) provided a new way of revealing preferences, with decisions under ...
International audienceIn the 1990's David Schmeidler and Itzhak Gilboa initiated the study of decisi...
We propose a framework in order to econometrically estimate case-based learning and apply it to empi...
We build a satisficing model of choice under risk which embeds Expected Utility Theory (EUT) into a ...
The leading normative (von Neumann & Morgenstern, 1947) and alternative psychological theories (e.g....
The Monty Hall Dilemma (MHD) is a two-step decision problem involving counterintuitive conditional p...
Computational models of learning have proved largely successful in characterizing potential mechanis...
This paper proposes a new decision theory of how individuals make random errors when they compute th...
We conduct two experiments where subjects make a sequence of binary choices between risky and ambigu...
In most theories of choice under uncertainty, decision-makers are assumed to evaluate acts in terms ...
“The final publication is available at Springer via http://dx.doi.org/10.1007/s11238-015-9492-1”."We...
Gilboa and Schmeidler provide a new paradigm for modeling decision making under uncertainty. Case-ba...
We introduce a computer program which calculates an agent’s optimal behavior according to Case-based...
International audienceCase-Based Decision Theory (CBDT) is a theory of decision making under uncerta...
The theory of expected utility maximization (EUM) explains risk aversion as due to diminishing margi...
Case-based decision theory (CBDT) provided a new way of revealing preferences, with decisions under ...
International audienceIn the 1990's David Schmeidler and Itzhak Gilboa initiated the study of decisi...
We propose a framework in order to econometrically estimate case-based learning and apply it to empi...
We build a satisficing model of choice under risk which embeds Expected Utility Theory (EUT) into a ...
The leading normative (von Neumann & Morgenstern, 1947) and alternative psychological theories (e.g....
The Monty Hall Dilemma (MHD) is a two-step decision problem involving counterintuitive conditional p...
Computational models of learning have proved largely successful in characterizing potential mechanis...
This paper proposes a new decision theory of how individuals make random errors when they compute th...
We conduct two experiments where subjects make a sequence of binary choices between risky and ambigu...