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Journal ArticleDOI

Profile Construction in Experimental Choice Designs for Mixed Logit Models

TLDR
In this paper, the authors evaluate the efficiency of conjoint choice designs based on the mixed multinomial logit model and derive an expression for the information matrix for that purpose.
Abstract
A computationally attractive model for the analysis of conjoint choice experiments is the mixed multinomial logit model, a multinomial logit model in which it is assumed that the coefficients follow a (normal) distribution across subjects. This model offers the advantage over the standard multinomial logit model of accommodating heterogeneity in the coefficients of the choice model across subjects, a topic that has received considerable interest recently in the marketing literature. With the advent of such powerful models, the conjoint choice design deserves increased attention as well. Unfortunately, if one wants to apply the mixed logit model to the analysis of conjoint choice experiments, the problem arises that nothing is known about the efficiency of designs based on the standard logit for parameters of the mixed logit. The development of designs that are optimal for mixed logit models or other random effects models has not been previously addressed and is the topic of this paper.The development of efficient designs requires the evaluation of the information matrix of the mixed multinomial logit model. We derive an expression for the information matrix for that purpose. The information matrix of the mixed logit model does not have closed form, since it involves integration over the distribution of the random coefficients. In evaluating it we approximate the integrals through repeated samples from the multivariate normal distribution of the coefficients. Since the information matrix is not a scalar we use the determinant scaled by its dimension as a measure of design efficiency. This enables us to apply heuristic search algorithms to explore the design space for highly efficient designs. We build on previously published heuristics based on relabeling, swapping, and cycling of the attribute levels in the design.Designs with a base alternative are commonly used and considered to be important in conjoint choice analysis, since they provide a way to compare the utilities of pro- files in different choice sets. A base alternative is a product profile that is included in all choice sets of a design. There are several types of base alternatives, examples being a socalled outside alternative or an alternative constructed from the attribute levels in the design itself. We extend our design construction procedures for mixed logit models to include designs with a base alternative and investigate and compare four design classes: designs with two alternatives, with two alternatives plus a base alternative, and designs with three and with four alternatives.Our study provides compelling evidence that each of these mixed logit designs provide more efficient parameter estimates for the mixed logit model than their standard logit counterparts and yield higher predictive validity. As compared to designs with two alternatives, designs that include a base alternative are more robust to deviations from the parameter values assumed in the designs, while that robustness is even higher for designs with three and four alternatives, even if those have 33% and 50% less choice sets, respectively. Those designs yield higher efficiency and better predictive validity at lower burden to the respondent. It is noteworthy that our "best" choice designs, the 3- and 4-alternative designs, resulted not only in a substantial improvement in efficiency over the standard logit design but also in an expected predictive validity that is over 50% higher in most cases, a number that pales the increases in predictive validity achieved by refined model specifications.

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Journal ArticleDOI

Discrete choice experiments in health economics: A review of the literature

TL;DR: This paper updates a review of published papers between 1990 and 2000 for the years 2001-2008, and focus is given to three issues: experimental design; estimation procedures; and validity of responses.
Journal ArticleDOI

Constructing Experimental Designs for Discrete-Choice Experiments: Report of the ISPOR Conjoint Analysis Experimental Design Good Research Practices Task Force

TL;DR: This report provides an overview of the role of experimental designs for the successful implementation of the DCE approach in health care studies and provides researchers with an introduction to constructing experimental designs on the basis of study objectives and the statistical model researchers have selected for the study.
Journal ArticleDOI

Contemporary Guidance for Stated Preference Studies

TL;DR: In this paper, the authors present a set of guidelines for stated preference studies that are more comprehensive than those of the original National Oceanic and Atmospheric Administration (NOAA) Blue Ribbon Panel on contingent valuation, and reflect the two decades of research since that time.
BookDOI

Using discrete choice experiments to value health and health care

TL;DR: Using Discrete Choice Experiments to Value Health and Health Care takes a fresh and contemporay look at the growing interest in the development and application of discrete choice experiments (DCEs) within the field of health economics.
Journal ArticleDOI

Design efficiency for non-market valuation with choice modelling: how to measure it, what to report and why*

TL;DR: In this article, the basic principles for the evaluation of design efficiency in discrete choice modelling with a focus on efficiency of WTP estimates from the multinomial logit model are reviewed under the realistic assumption that researchers can plausibly define a prior belief on the range of values for the utility coefficients.
References
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Journal ArticleDOI

Mixed mnl models for discrete response

TL;DR: In this article, the adequacy of a mixing specification can be tested simply as an omitted variable test with appropriately definedartificial variables, and a practicalestimation of aarametricmixingfamily can be run by MaximumSimulated Likelihood EstimationorMethod ofSimulatedMoments, andeasilycomputedinstruments are provided that make the latter procedure fairly eAcient.
Journal ArticleDOI

Mixed logit with repeated choices: households' choices of appliance efficiency level

TL;DR: Mixed logit as mentioned in this paper is a generalization of standard logit that does not exhibit the restrictive independence from irrelevant alternatives property and explicitly accounts for correlations in unobserved utility over repeated choices by each customer.
Journal ArticleDOI

Design and Analysis of Simulated Consumer Choice or Allocation Experiments: An Approach Based on Aggregate Data:

TL;DR: In this paper, the authors integrate concepts in conjoint analysis and discrete choice theory in econometrics to develop a new approach to the design and analysis of controlled consumer choice or resource allocation.
Journal ArticleDOI

The Importance of Utility Balance in Efficient Choice Designs

TL;DR: In this paper, the authors show that if there are reasonable nonzero priors for expected coefficients, then these choice designs can be built under the assumption that all coefficients are zero. But this assumption is not always true.
Journal ArticleDOI

Marketing models of consumer heterogeneity

TL;DR: In this article, the authors discuss various approaches to modeling consumer heterogeneity and evaluate the utility of these approaches for marketing applications, and discuss the benefits of different approaches for different types of consumer heterogeneity.