In many areas of economics there is a growing interest in how expertise and preferences drive individual and group decision making under uncertainty. Increasingly, we wish to estimate such models to quantify which of these drive decision making. In this paper we propose a new channel through which we can empirically identify expertise and preference parameters by using variation in decisions over heterogeneous priors. Relative to existing estimation approaches, our “Prior-Based Identification” extends the possible environments which can be estimated, and also substantially improves the accuracy and precision of estimates in those environments which can be estimated using existing methods
In a companion paper [1], we have presented a generic approach for inferring how subjects make optim...
We consider the recent novel two-step estimator of Iaryczower and Shum (2012), who analyze voting de...
Both human and algorithmic decision making can be complex. To truly intertwine the two, algorithms ...
In many areas of economics there is a growing interest in how expertise and preferences drive indivi...
We consider the recent novel two-step estimator of Iaryczower and Shum (American Economic Review 201...
We consider the recent novel two‐step estimator of Iaryczower and Shum (American Economic Review 20...
A large theoretical literature assumes that experts differ in terms of preferences and the distribut...
Published ArticleThe paper is concerned with the problem of Bayesian decision-makers seeking consens...
We consider the problem of combining opinions from different experts in an explicitly model-based wa...
Bayesian decision theory provides a strong theoretical basis for a single-participant decision makin...
This paper proposes and demonstrates an approach, Skilloscopy, to the assessment of decision makers...
We consider three competing normative theories of how to make choices when facing uncertainty: subje...
Economists and psychologists have recently been developing new theories of decision making under unc...
Much applied research uses expert judgment as a primary or additional data source, thus the problem ...
The purpose of this study was to develop a Bayesian statistical approach to evaluate the relative m...
In a companion paper [1], we have presented a generic approach for inferring how subjects make optim...
We consider the recent novel two-step estimator of Iaryczower and Shum (2012), who analyze voting de...
Both human and algorithmic decision making can be complex. To truly intertwine the two, algorithms ...
In many areas of economics there is a growing interest in how expertise and preferences drive indivi...
We consider the recent novel two-step estimator of Iaryczower and Shum (American Economic Review 201...
We consider the recent novel two‐step estimator of Iaryczower and Shum (American Economic Review 20...
A large theoretical literature assumes that experts differ in terms of preferences and the distribut...
Published ArticleThe paper is concerned with the problem of Bayesian decision-makers seeking consens...
We consider the problem of combining opinions from different experts in an explicitly model-based wa...
Bayesian decision theory provides a strong theoretical basis for a single-participant decision makin...
This paper proposes and demonstrates an approach, Skilloscopy, to the assessment of decision makers...
We consider three competing normative theories of how to make choices when facing uncertainty: subje...
Economists and psychologists have recently been developing new theories of decision making under unc...
Much applied research uses expert judgment as a primary or additional data source, thus the problem ...
The purpose of this study was to develop a Bayesian statistical approach to evaluate the relative m...
In a companion paper [1], we have presented a generic approach for inferring how subjects make optim...
We consider the recent novel two-step estimator of Iaryczower and Shum (2012), who analyze voting de...
Both human and algorithmic decision making can be complex. To truly intertwine the two, algorithms ...