Judgment and Decision Making (Apr 2009)

Compensatory versus noncompensatory models for predicting consumer preferences

  • Anja Dieckmann,
  • Katrin Dippold,
  • Holger Dietrich

DOI
https://doi.org/10.1017/S193029750000173X
Journal volume & issue
Vol. 4
pp. 200 – 213

Abstract

Read online

Standard preference models in consumer research assume that people weigh and add all attributes of the available options to derive a decision, while there is growing evidence for the use of simplifying heuristics. Recently, a greedoid algorithm has been developed (Yee, Dahan, Hauser & Orlin, 2007; Kohli & Jedidi, 2007) to model lexicographic heuristics from preference data. We compare predictive accuracies of the greedoid approach and standard conjoint analysis in an online study with a rating and a ranking task. The lexicographic model derived from the greedoid algorithm was better at predicting ranking compared to rating data, but overall, it achieved lower predictive accuracy for hold-out data than the compensatory model estimated by conjoint analysis. However, a considerable minority of participants was better predicted by lexicographic strategies. We conclude that the new algorithm will not replace standard tools for analyzing preferences, but can boost the study of situational and individual differences in preferential choice processes.

Keywords