Assortment Optimization Under Consider-Then-Choose Choice Models
Author(s)
Aouad, Ali; Farias, Vivek; Levi, Retsef
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<jats:p> Consider-then-choose models, borne out by empirical literature in marketing and psychology, explain that customers choose among alternatives in two phases, by first screening products to decide which alternatives to consider and then ranking them. In this paper, we develop a dynamic programming framework to study the computational aspects of assortment optimization under consider-then-choose premises. Although nonparametric choice models generally lead to computationally intractable assortment optimization problems, we are able to show that for many empirically vetted assumptions on how customers consider and choose, our resulting dynamic program is efficient. Our approach unifies and subsumes several specialized settings analyzed in previous literature. Empirically, we demonstrate the predictive power of our modeling approach on a combination of synthetic and real industry data sets, where prediction errors are significantly reduced against common parametric choice models. In synthetic experiments, our algorithms lead to practical computation schemes that outperform a state-of-the-art integer programming solver in terms of running time, in several parameter regimes of interest. </jats:p><jats:p> This paper was accepted by Yinyu Ye, optimization. </jats:p>
Date issued
2020Department
Massachusetts Institute of Technology. Operations Research Center; Sloan School of ManagementJournal
Management Science
Publisher
Institute for Operations Research and the Management Sciences (INFORMS)