Recently, the use of Bayesian optimal designs for discrete choice experiments, also called stated choice experiments or conjoint choice experiments, has gained much attention, stimulating the development of Bayesian choice design algorithms. Characteristic for the Bayesian design strategy is that it incorporates the available information about people's preferences for various product attributes in the choice design. This is in contrast with the linear design methodology, which is also used in discrete choice design and which depends for any claims of optimality on the unrealistic assumption that people have no preference for any of the attribute levels. Although linear design principles have often been used to construct discrete choice expe...
Discrete choice experiments are widely used in a broad area of research fields to capture the prefer...
In order to acquire insight into consumer preferences for products and services that are described b...
Abstract: We propose an efficient individually adapted sequential Bayesian approach for constructing...
Recently, the use of Bayesian optimal designs for discrete choice experiments, also called stated ch...
In this paper, we argue that some of the prior parameter distributions used in the literature for th...
Bayesian design theory applied to nonlinear models is a promising route to cope with the problem of ...
Recently, Kessels et al. (2006) developed a way to produce Bayesian G- and V-optimal designs for the...
textabstractPrevious conjoint choice design construction procedures have produced a single design th...
Discrete choice experiments (DCEs) have become a commonly used technique in health economics, market...
We develop a method for finding optimal designs in Discrete Choice Experiments (DCEs). More specifi...
In this paper, we propose an efficient individually adapted sequential Bayesian approach for constru...
Conjoint choice experiments elicit individuals' preferences for the attributes of a good by asking r...
Bayesian optimal designs for discrete choice experiments with partial profiles In a discrete choice ...
This paper discusses different design techniques for stated preference surveys in health economic ap...
AbstractDisagreement among researchers regarding types of optimal choice experiments is often best s...
Discrete choice experiments are widely used in a broad area of research fields to capture the prefer...
In order to acquire insight into consumer preferences for products and services that are described b...
Abstract: We propose an efficient individually adapted sequential Bayesian approach for constructing...
Recently, the use of Bayesian optimal designs for discrete choice experiments, also called stated ch...
In this paper, we argue that some of the prior parameter distributions used in the literature for th...
Bayesian design theory applied to nonlinear models is a promising route to cope with the problem of ...
Recently, Kessels et al. (2006) developed a way to produce Bayesian G- and V-optimal designs for the...
textabstractPrevious conjoint choice design construction procedures have produced a single design th...
Discrete choice experiments (DCEs) have become a commonly used technique in health economics, market...
We develop a method for finding optimal designs in Discrete Choice Experiments (DCEs). More specifi...
In this paper, we propose an efficient individually adapted sequential Bayesian approach for constru...
Conjoint choice experiments elicit individuals' preferences for the attributes of a good by asking r...
Bayesian optimal designs for discrete choice experiments with partial profiles In a discrete choice ...
This paper discusses different design techniques for stated preference surveys in health economic ap...
AbstractDisagreement among researchers regarding types of optimal choice experiments is often best s...
Discrete choice experiments are widely used in a broad area of research fields to capture the prefer...
In order to acquire insight into consumer preferences for products and services that are described b...
Abstract: We propose an efficient individually adapted sequential Bayesian approach for constructing...