AbstractThis paper compares different types of simulated draws over a range of number of draws in generating Bayesian efficient designs for stated choice (SC) studies. The paper examines how closely pseudo Monte Carlo, quasi Monte Carlo and Gaussian quadrature methods are able to replicate the true levels of Bayesian efficiency for SC designs of various dimensions. The authors conclude that the predominantly employed method of using pseudo Monte Carlo draws is unlikely to result in leading to truly Bayesian efficient SC designs. The quasi Monte Carlo methods analysed here (Halton, Sobol, and Modified Latin Hypercube Sampling) all clearly outperform the pseudo Monte Carlo draws. However, the Gaussian quadrature method examined in this paper,...
<p>Many optimal experimental designs depend on one or more unknown model parameters. In such cases, ...
Good practice in experimental design is essential for choice experiments used in nonmarket valuation...
The construction of decision-theoretical Bayesian designs for realistically complex nonlinear models...
This paper compares different types of simulated draws over a range of number of draws in generating...
This paper compares different types of simulated draws over a range of number of draws in generating...
ABSTRACT: This paper compares different types of simulated draws over a range of number of draws in ...
This paper compares different types of simulated draws over a range of number of draws in generating...
AbstractThis paper compares different types of simulated draws over a range of number of draws in ge...
The semi-Bayesian approach for constructing efficient stated choice designs requires the evaluation ...
The semi-Bayesian approach for constructing efficient stated choice designs requires the evaluation ...
In conjoint choice experiments, the semi-Bayesian D-optimality criterion is often used to compute ef...
The design of an experiment can be always be considered at least implicitly Bayesian, with prior kno...
Good practice in experimental design is essential for choice experiments used in nonmarket valuation...
Good practice in experimental design is essential for choice experiments used in nonmarket valuation...
Good practice in experimental design is essential for choice experiments used in nonmarket valuation...
<p>Many optimal experimental designs depend on one or more unknown model parameters. In such cases, ...
Good practice in experimental design is essential for choice experiments used in nonmarket valuation...
The construction of decision-theoretical Bayesian designs for realistically complex nonlinear models...
This paper compares different types of simulated draws over a range of number of draws in generating...
This paper compares different types of simulated draws over a range of number of draws in generating...
ABSTRACT: This paper compares different types of simulated draws over a range of number of draws in ...
This paper compares different types of simulated draws over a range of number of draws in generating...
AbstractThis paper compares different types of simulated draws over a range of number of draws in ge...
The semi-Bayesian approach for constructing efficient stated choice designs requires the evaluation ...
The semi-Bayesian approach for constructing efficient stated choice designs requires the evaluation ...
In conjoint choice experiments, the semi-Bayesian D-optimality criterion is often used to compute ef...
The design of an experiment can be always be considered at least implicitly Bayesian, with prior kno...
Good practice in experimental design is essential for choice experiments used in nonmarket valuation...
Good practice in experimental design is essential for choice experiments used in nonmarket valuation...
Good practice in experimental design is essential for choice experiments used in nonmarket valuation...
<p>Many optimal experimental designs depend on one or more unknown model parameters. In such cases, ...
Good practice in experimental design is essential for choice experiments used in nonmarket valuation...
The construction of decision-theoretical Bayesian designs for realistically complex nonlinear models...