We introduce a computer program which calculates an agent’s optimal behavior according to Case-based Decision Theory (Gilboa and Schmeidler, 1995) and use it to test CBDT against a benchmark set of problems from the psychological literature on human classification learning (Shepard et al., 1961). This allows us to evaluate the efficacy of CBDT as an account of human decision-making on this set of problems. We find: (1) The choice behavior of this program (and therefore Case-based Decision Theory) correctly predicts the empirically observed relative difficulty of problems and speed of learning in human data. (2) ‘Similarity’ (how CBDT decision makers extrapolate from memory) is decreasing in vector distance, consistent with evidence in psyc...
Economists and psychologists have recently been developing new theories of decision making under unc...
Gilboa and Schmeidler provide a new paradigm for modeling decision making under uncertainty. Case-ba...
Case-Based Reasoning (CBR) is a Machine Learning technique that models human reasoning. As it learns...
“The final publication is available at Springer via http://dx.doi.org/10.1007/s11238-015-9492-1”."We...
In this paper, we show that Case-based decision theory, proposed by Gilboa and Schmeidler (Q J Econ ...
In most theories of choice under uncertainty, decision-makers are assumed to evaluate acts in terms ...
Interest in psychological experimentation from the Artificial Intelligence community often takes the...
This article describes a general model of decision rule learning, the rule competition model, compos...
Interest in psychological experimentation from the Artificial Intelligence community often takes the...
We propose a framework in order to econometrically estimate case-based learning and apply it to empi...
Case-based decision theory (CBDT) provided a new way of revealing preferences, with decisions under ...
Economists and psychologists have recently been developing new theories of decision making under unc...
International audienceIn the 1990's David Schmeidler and Itzhak Gilboa initiated the study of decisi...
Case-based reasoning (CBR) is a well-established problem solving paradigm that has been used in a w...
The book presents an axiomatic approach to the problems of prediction, classification, and statistic...
Economists and psychologists have recently been developing new theories of decision making under unc...
Gilboa and Schmeidler provide a new paradigm for modeling decision making under uncertainty. Case-ba...
Case-Based Reasoning (CBR) is a Machine Learning technique that models human reasoning. As it learns...
“The final publication is available at Springer via http://dx.doi.org/10.1007/s11238-015-9492-1”."We...
In this paper, we show that Case-based decision theory, proposed by Gilboa and Schmeidler (Q J Econ ...
In most theories of choice under uncertainty, decision-makers are assumed to evaluate acts in terms ...
Interest in psychological experimentation from the Artificial Intelligence community often takes the...
This article describes a general model of decision rule learning, the rule competition model, compos...
Interest in psychological experimentation from the Artificial Intelligence community often takes the...
We propose a framework in order to econometrically estimate case-based learning and apply it to empi...
Case-based decision theory (CBDT) provided a new way of revealing preferences, with decisions under ...
Economists and psychologists have recently been developing new theories of decision making under unc...
International audienceIn the 1990's David Schmeidler and Itzhak Gilboa initiated the study of decisi...
Case-based reasoning (CBR) is a well-established problem solving paradigm that has been used in a w...
The book presents an axiomatic approach to the problems of prediction, classification, and statistic...
Economists and psychologists have recently been developing new theories of decision making under unc...
Gilboa and Schmeidler provide a new paradigm for modeling decision making under uncertainty. Case-ba...
Case-Based Reasoning (CBR) is a Machine Learning technique that models human reasoning. As it learns...