In conjoint choice experiments, the semi-Bayesian D-optimality criterion is often used to compute efficient designs. The traditional way to compute this criterion which involves multi-dimensional integrals over the prior distribution is to use Pseudo-Monte Carlo samples. However, other sampling approaches are available. Examples are the Quasi-Monte Carlo approach (randomized Halton sequences, modified Latin hypercube sampling and extensible shifted lattice points with Baker's transformation), the Gaussian-Hermite quadrature approach and a method using spherical-radial transformations. Not much is known in general about which sampling scheme performs best in constructing efficient choice designs. In this study, we compare the performance of ...
Conjoint choice experiments have become a powerful tool to explore individual preferences. The consi...
Recently, the use of Bayesian optimal designs for discrete choice experiments, also called stated ch...
Recently, Kessels et al. (2006) developed a way to produce Bayesian G- and V-optimal designs for the...
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 ...
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...
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...
Recently, the use of Bayesian optimal designs for discrete choice experiments, also called stated ch...
Recently, the use of Bayesian optimal designs for discrete choice experiments, also called stated ch...
Recently, the use of Bayesian optimal designs for discrete choice experiments, also called stated ch...
Recently, the use of Bayesian optimal designs for discrete choice experiments, also called stated ch...
Recently, the use of Bayesian optimal designs for discrete choice experiments, also called stated ch...
Conjoint choice experiments have become a powerful tool to explore individual preferences. The consi...
Recently, the use of Bayesian optimal designs for discrete choice experiments, also called stated ch...
Recently, Kessels et al. (2006) developed a way to produce Bayesian G- and V-optimal designs for the...
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 ...
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...
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...
Recently, the use of Bayesian optimal designs for discrete choice experiments, also called stated ch...
Recently, the use of Bayesian optimal designs for discrete choice experiments, also called stated ch...
Recently, the use of Bayesian optimal designs for discrete choice experiments, also called stated ch...
Recently, the use of Bayesian optimal designs for discrete choice experiments, also called stated ch...
Recently, the use of Bayesian optimal designs for discrete choice experiments, also called stated ch...
Conjoint choice experiments have become a powerful tool to explore individual preferences. The consi...
Recently, the use of Bayesian optimal designs for discrete choice experiments, also called stated ch...
Recently, Kessels et al. (2006) developed a way to produce Bayesian G- and V-optimal designs for the...