Neuromarketing and decision-making: Classification of consumer preferences based on changes analysis in the EEG signal of brain regions

被引:13
|
作者
Ouzir, Mounir [1 ]
Lamrani, Houda Chakir [2 ]
Bradley, Rachel L. [3 ]
El Moudden, Ismail [3 ]
机构
[1] High Inst Nursing Profess & Hlth Tech, ISPITS Beni Mellal, Beni Mellal, Morocco
[2] EMAA Business Sch, Ave Moulay Hassan I, Agadir 80020, Morocco
[3] Eastern Virginia Med Sch, Norfolk, VA USA
关键词
Neuromarketing; Decision-making; Consumer preference; EEG; Classification; RESPONSES;
D O I
10.1016/j.bspc.2023.105469
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
Neuromarketing involves the study of brain responses that focuses on understanding how consumers' brains respond to products and services, and how these responses influence their choice. Evidence suggests that electroencephalography (EEG) can provide valuable insight into consumer preferences and decision-making processes. This study aims is to assess the relative importance of right/left brain regions (including hemispheres, frontal, temporal, parietal, and occipital lobes) in the consumer choice towards E-commerce products. Also, this study aims to distinguishes the EEG characteristics of consumers' preference using a classification system.Using a publicly available EEG neuromarketing dataset, the change in EEG signals has been evaluated by a mixed model for repeated measures for all brain regions. Four classification algorithms (k-Nearest Neighbor, Random Forest, Neural Network, and Gradient Boosting) were used to distinguish like and dislike preferences.Greater EEG activity in the right hemisphere, right parietal, right occipital, and left occipital was related to like responses. Except for both sides of the temporal lobe, all the subdivisions of the brain considered showed a significant decrease of activity at 4000 ms for like-related responses. However, no significant change in the activity was related to the dislike response. The highest AUC of the four classifiers used was as follows: 76.61% for the right parietal lobe with Neural Network, 75.33% for the left parietal lobe with Gradient Boosting, 73.55% for the right frontal lobe with k-Nearest Neighbor and 72.62% for the right frontal lobe with Random Forest. Considering the significant difference between like and dislike responses at 4000 ms, Neural Network showed the best performance followed by Gradient Boosting.Our framework suggests that the formation of preferences (like and dislike) requires different patterns of brain activity and that Neural Network and Gradient Boosting are valuable tools for distinguishing consumer preference.
引用
收藏
页数:15
相关论文
共 50 条
  • [21] A new decision-making method by incomplete preferences based on evidence distance
    Huang, Shiyan
    Su, Xiaoyan
    Hu, Yong
    Mahadevan, Sankaran
    Deng, Yong
    KNOWLEDGE-BASED SYSTEMS, 2014, 56 : 264 - 272
  • [22] Bayesian-Based Decision-Making for Object Search and Classification
    Wang, Yue
    Hussein, Islam I.
    IEEE TRANSACTIONS ON CONTROL SYSTEMS TECHNOLOGY, 2011, 19 (06) : 1639 - 1647
  • [23] Different Decision-Making Responses Occupy Different Brain Networks for Information Processing: A Study Based on EEG and TMS
    Si, Yajing
    Wu, Xi
    Li, Fali
    Zhang, Luyan
    Duan, Keyi
    Li, Peiyang
    Song, Limeng
    Jiang, Yuanling
    Zhang, Tao
    Zhang, Yangsong
    Chen, Jing
    Gao, Shan
    Biswal, Bharat
    Yao, Dezhong
    Xu, Peng
    CEREBRAL CORTEX, 2019, 29 (10) : 4119 - 4129
  • [24] Decision-Making Analysis using Arduino-Based Electroencephalography (EEG): An Exploratory Study for Marketing Strategy
    Yazid, Ahmad Faiz
    Mohd, Siti Munirah
    Khan, Abdul Razzak Khan Rustum Ali
    Kamarudin, Shafinah
    Jan, Nurhidaya Mohamad
    INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2020, 11 (09) : 236 - 243
  • [25] Consumer preference analysis based on text comments and ratings: A multi-attribute decision-making perspective
    Zhu, Bin
    Guo, Dingfei
    Ren, Long
    INFORMATION & MANAGEMENT, 2022, 59 (03)
  • [26] Predicting individual decision-making responses based on single-trial EEG
    Si, Yajing
    Li, Fali
    Duan, Keyi
    Tao, Qin
    Li, Cunbo
    Cao, Zehong
    Zhang, Yangsong
    Biswal, Bharat
    Li, Peiyang
    Yao, Dezhong
    Xu, Peng
    NEUROIMAGE, 2020, 206
  • [27] DECISION-MAKING MODEL FOR DESIGNING TELECOM PRODUCTS/SERVICES BASED ON CUSTOMER PREFERENCES AND NON-PREFERENCES
    Cid-Lopez, Andres
    Hornos, Miguel J.
    Alberto Carrasco, Ramon
    Herrera-Viedma, Enrique
    TECHNOLOGICAL AND ECONOMIC DEVELOPMENT OF ECONOMY, 2022, : 1818 - 1853
  • [28] An Analysis and Decision-making of Ammunition Invalidation Based on FTA
    Li Hongwei
    Yan Jun
    Xiong Yun
    Li Fulong
    PROCEEDINGS OF 2009 CONFERENCE ON SYSTEMS SCIENCE, MANAGEMENT SCIENCE & SYSTEM DYNAMICS, VOL 3, 2009, : 203 - 207
  • [29] Decision-making based on sustainability analysis using GREENSCOPE
    Ricardo N. Dias
    Rui M. Filipe
    Henrique A. Matos
    Clean Technologies and Environmental Policy, 2024, 26 : 755 - 770
  • [30] Dimensions of decision-making: An evidence-based classification of heuristics and biases
    Ceschi, Andrea
    Costantini, Arianna
    Sartori, Riccardo
    Weller, Joshua
    Di Fabio, Annamaria
    PERSONALITY AND INDIVIDUAL DIFFERENCES, 2019, 146 : 188 - 200