Case-based decision theory (CBDT) provided a new way of revealing preferences, with decisions under uncertainty determined by similarities with cases in memory. This paper introduces a method to measure CBDT that requires no commitment to parametric families and that relates directly to decisions. Thus, CBDT becomes directly observable and can be used in prescriptive applications. Two experiments on real estate investments demonstrate the feasibility of our method. Our implementation of real incentives not only avoids the income effect, but also avoids interactions between different memories. We confirm CBDT's predictions except for one violation of separability of cases in memory. This record was migrated from the OpenDepot repository serv...
Case-Based Reasoning (CBR) has become a relevant alternative to the classical rule-based approach in...
The present model of individual decision-making is based on a bounded-rationality style assumption. ...
Case-Based Reasoning (CBR) is a Machine Learning technique that models human reasoning. As it learns...
Case-based decision theory (CBDT) provided a new way of revealing preferences, with decisions under ...
In most theories of choice under uncertainty, decision-makers are assumed to evaluate acts in terms ...
International audienceCase-Based Decision Theory (CBDT) is a theory of decision making under uncerta...
International audienceThis paper suggests that decision-making under uncertainty is, at least partly...
Case-based decision theory (Gilboa and Schmeidler, 1995) predicts that given a new problem, a decisi...
“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...
We present a formal model of decision-making under uncertainty, a variant of Case-Based Decision The...
International audienceCase-Based Decision Theory (CBDT) postulates that decision making under uncert...
International audienceIn the 1990's David Schmeidler and Itzhak Gilboa initiated the study of decisi...
I analyze whether case-based decision makers (CBDM) can survive in an assetmarket in the presence of...
Case-Based Reasoning (CBR) has become a relevant alternative to the classical rule-based approach in...
The present model of individual decision-making is based on a bounded-rationality style assumption. ...
Case-Based Reasoning (CBR) is a Machine Learning technique that models human reasoning. As it learns...
Case-based decision theory (CBDT) provided a new way of revealing preferences, with decisions under ...
In most theories of choice under uncertainty, decision-makers are assumed to evaluate acts in terms ...
International audienceCase-Based Decision Theory (CBDT) is a theory of decision making under uncerta...
International audienceThis paper suggests that decision-making under uncertainty is, at least partly...
Case-based decision theory (Gilboa and Schmeidler, 1995) predicts that given a new problem, a decisi...
“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...
We present a formal model of decision-making under uncertainty, a variant of Case-Based Decision The...
International audienceCase-Based Decision Theory (CBDT) postulates that decision making under uncert...
International audienceIn the 1990's David Schmeidler and Itzhak Gilboa initiated the study of decisi...
I analyze whether case-based decision makers (CBDM) can survive in an assetmarket in the presence of...
Case-Based Reasoning (CBR) has become a relevant alternative to the classical rule-based approach in...
The present model of individual decision-making is based on a bounded-rationality style assumption. ...
Case-Based Reasoning (CBR) is a Machine Learning technique that models human reasoning. As it learns...