Leveraging genetic data for predicting consumer choices of alcoholic products

食物选择 情感(语言学) 独创性 价值(数学) 心理学 计量经济学 计算机科学 社会心理学 机器学习 经济 医学 沟通 病理 创造力
作者
Chen Zhu,Timothy K.M. Beatty,Qiran Zhao,Wei Si,Qihui Chen
出处
期刊:China Agricultural Economic Review [Emerald (MCB UP)]
标识
DOI:10.1108/caer-09-2022-0214
摘要

Purpose Food choices profoundly affect one's dietary, nutritional and health outcomes. Using alcoholic beverages as a case study, the authors assess the potential of genetic data in predicting consumers' food choices combined with conventional socio-demographic data. Design/methodology/approach A discrete choice experiment was conducted to elicit the underlying preferences of 484 participants from seven provinces in China. By linking three types of data (—data from the choice experiment, socio-demographic information and individual genotyping data) of the participants, the authors employed four machine learning-based classification (MLC) models to assess the performance of genetic information in predicting individuals' food choices. Findings The authors found that the XGBoost algorithm incorporating both genetic and socio-demographic data achieves the highest prediction accuracy (77.36%), significantly outperforming those using only socio-demographic data (permutation test p -value = 0.033). Polygenic scores of several behavioral traits (e.g. depression and height) and genetic variants associated with bitter taste perceptions (e.g. TAS2R5 rs2227264 and TAS2R38 rs713598) offer contributions comparable to that of standard socio-demographic factors (e.g. gender, age and income). Originality/value This study is among the first in the economic literature to empirically demonstrate genetic factors' important role in predicting consumer behavior. The findings contribute fresh insights to the realm of random utility theory and warrant further consumer behavior studies integrating genetic data to facilitate developments in precision nutrition and precision marketing.
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