The Effectiveness of Alternative Preference Elicitation Procedures in Predicting Choice

In a large-scale national study, the authors evaluated the effectiveness of several preference elicitation techniques for predicting choices. The criteria for accuracy included both individual hit rates and a new measure, the mean absolute error predicting aggregate share using a logit choice simulator. The central finding is that hybrid models combining information from different preference elicitation tasks consistently outperform models based on one task. For example, ACA, a method that combines a self-explicated prior with relative preference measures on pairs, predicts choices better than full-profile conjoint when warmup tasks are lacking. However, there is no difference between the models if ACA's prior is combined with the full-profile information. Further, the most accurate method combines data from all three sources, suggesting that each preference elicitation technique taps a different aspect of the choice process in the validation task. Finally, full-profile conjoint is found to be significantly more accurate after rather than before, other preference elicitation tasks, implying that its performance can be improved with warmup exercises.

[1]  P. Green,et al.  Conjoint Analysis in Consumer Research: Issues and Outlook , 1978 .

[2]  R. Olshavsky,et al.  Consumer Decision Making—Fact or Fiction? , 1979 .

[3]  Philippe Cattin,et al.  A Simple Bayesian Procedure for Estimation in a Conjoint Model , 1983 .

[4]  G. Urban,et al.  Pre-Test-Market Evaluation of New Packaged Goods: A Model and Measurement Methodology , 1978 .

[5]  Joel Huber,et al.  Adapting Cutoffs to the Choice Environment: The Effects of Attribute Correlation and Reliability , 1991 .

[6]  Paul E. Green,et al.  Hybrid Models for Conjoint Analysis: An Expository Review , 1984 .

[7]  J. Bettman,et al.  Effects of Prior Knowledge and Experience and Phase of the Choice Process on Consumer Decision Processes: A Protocol Analysis , 1980 .

[8]  Jordan J. Louviere,et al.  Analyzing Decision Making: Metric Conjoint Analysis , 1988 .

[9]  Michael R. Hagerty,et al.  The Cost of Simplifying Preference Models , 1986 .

[10]  William R. Dillon,et al.  Capturing Individual Differences in Paired Comparisons: An Extended BTL Model Incorporating Descriptor Variables , 1993 .

[11]  Richard M. Johnson Comment on “Adaptive Conjoint Analysis: Some Caveats and Suggestions”7 , 1991 .

[12]  Dick R. Wittink,et al.  Commercial use of conjoint analysis in Europe: Results and critical reflections , 1994 .

[13]  Philippe Cattin,et al.  Commercial Use of Conjoint Analysis: An Update , 1989 .

[14]  Jordan J. Louviere,et al.  Design and Analysis of Simulated Consumer Choice or Allocation Experiments: An Approach Based on Aggregate Data , 1983 .

[15]  D. Wittink,et al.  Commercial Use of Conjoint Analysis: A Survey , 1982 .

[16]  V. Srinivasan,et al.  A CONJUNCTIVE-COMPENSATORY APPROACH TO THE SELF-EXPLICATION OF MULTIATTRIBUTED PREFERENCES* , 1988 .

[17]  B. Dosher,et al.  Strategies for multiattribute binary choice. , 1983, Journal of experimental psychology. Learning, memory, and cognition.

[18]  Pradeep K. Korgaonkar,et al.  An Empirical Comparison of the Predictive Validity of Self-Explicated, Huber-Hybrid, Traditional Conjoint, and Hybrid Conjoint Models , 1983 .

[19]  John W. Payne,et al.  Task complexity and contingent processing in decision making: An information search and protocol analysis☆ , 1976 .

[20]  R. L. Winkler,et al.  Averages of Forecasts: Some Empirical Results , 1983 .

[21]  Randolph E. Bucklin,et al.  Determining Interbrand Substitutability through Survey Measurement of Consumer Preference Structures , 1991 .

[22]  Naresh K. Malhotra,et al.  Improving Predictive Power of Conjoint Analysis by Constrained Parameter Estimation , 1983 .

[23]  Peter Wright,et al.  State-of-mind effects on the accuracy with which utility functions predict marketplace choice. , 1980 .

[24]  John W. Payne,et al.  Contingent decision behavior. , 1982 .

[25]  Jordan J. Louviere,et al.  Analyzing Decision Making , 1988 .

[26]  Paul E. Green,et al.  Adaptive Conjoint Analysis: Some Caveats and Suggestions , 1991 .

[27]  David J. Reibstein,et al.  Conjoint Analysis Reliability: Empirical Findings , 1988 .

[28]  Jordan J. Louviere,et al.  An Empirical Comparison of Ratings-Based and Choice-Based Conjoint Models , 1992 .

[29]  Eric J. Johnson,et al.  Product familiarity and learning new information , 1984 .

[30]  George P. Huber,et al.  Multi-Attribute Utility Models: A Review of Field and Field-Like Studies , 1974 .

[31]  A. Tversky,et al.  Contingent weighting in judgment and choice , 1988 .

[32]  A. Tversky,et al.  Judgment under Uncertainty: Heuristics and Biases , 1974, Science.

[33]  Edgar A. Pessemier,et al.  Using Laboratory Brand Preference Scales to Predict Consumer Brand Purchases , 1971 .

[34]  Noreen M. Klein,et al.  An Investigation of Utility-Directed Cutoff Selection , 1987 .

[35]  M. Moriarty Boundary Value Models for the Combination of Forecasts , 1990 .

[36]  Barton A. Weitz,et al.  Retrospective Self-Insight on Factors Considered in Product Evaluation , 1979 .

[37]  John O. Summers,et al.  Reliability and Validity of Conjoint Analysis and Self-Explicated Weights: A Comparison , 1984 .

[38]  A. Tversky Intransitivity of preferences. , 1969 .