4.7 Article

Preference estimation under bounded rationality: Identification of attribute non-attendance in stated-choice data using a support vector machines approach

Journal

EUROPEAN JOURNAL OF OPERATIONAL RESEARCH
Volume 304, Issue 2, Pages 797-812

Publisher

ELSEVIER
DOI: 10.1016/j.ejor.2022.04.018

Keywords

OR in marketing; Machine learning; Choice -based conjoint; Attribute non-attendance

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This study proposes a machine learning approach to identify attribute non-attendance (ANA) at the individual level and predict consumer choices in conjoint experiments. Extensive simulation and empirical testing demonstrate the good performance and usefulness of the proposed method.
Stated-choice experiments have been useful in helping to make a number of operations management de-cisions. Many recent advances in this area have raised questions about estimating consumers' preferences when they partially ignore the information provided in discrete choice experiments, a problem introduced as attribute non-attendance (ANA). This line of research explores the consequences of assuming that con-sumers consider all available information concerning attributes to evaluate product alternatives, when in fact, they might ignore some attributes completely. Diverse choice models, such as latent class models, have been developed to accommodate ANA using choice data. Due to the combinatorial nature of such an approach, researchers typically explore a limited number of specifications. Furthermore, although diverse modeling approaches have been proposed to accommodate ANA, no research has investigated the capa-bility of these approaches to correctly identify ANA at the individual level. In this work, we propose the use of a machine learning approach based on support vector machines to identify ANA at the individual level and to predict consumer choices in conjoint experiments. We conduct an extensive simulation study varying the degree of non-attendance and the noise in the choice data to investigate the performance of the proposed approach. Our results with simulated data show good performance in terms of the identifi-cation of attended and non-attended attributes. We test our approach in two empirical applications and compare it to state-of-the-art benchmarks in the field. We demonstrate the usefulness and the alternative insights derived from our method.(c) 2022 Elsevier B.V. All rights reserved.

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