Gender Differences in EEG Responses to Color and Black-White Images: Implications for Neuromarketing Strategies

Analyzing the decision of different genders during shopping is an interesting topic in the neuromarketing industry. This study explores the EEG signal acquisition of twenty subjects in response to Color and Black-White (CL/BW) images and analysis both linear and nonlinear features in different brain...

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Main Authors: Atefe Hassani, Amin Hekmatmanesh, Ali Motie Nasrabadi
Format: Article
Language:English
Published: IEEE 2023-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/10230236/
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author Atefe Hassani
Amin Hekmatmanesh
Ali Motie Nasrabadi
author_facet Atefe Hassani
Amin Hekmatmanesh
Ali Motie Nasrabadi
author_sort Atefe Hassani
collection DOAJ
description Analyzing the decision of different genders during shopping is an interesting topic in the neuromarketing industry. This study explores the EEG signal acquisition of twenty subjects in response to Color and Black-White (CL/BW) images and analysis both linear and nonlinear features in different brain regions. The Wilcoxon Rank Sum statistical test was utilized to determine the significance of features in identifying discriminative channels and frequency bands. The results show that the activation of different bands and regions are dependent on the subject’s preference and the color of stimuli which are evaluated by spectral scalp map and power spectral density analysis on the the regions. Then, random forest, support vector machine, k-nearest neighbors, and linear discriminant analysis classifiers were also employed to identify the most significant active regions of different brain lobes in both human genders. For the female group in the Like task with CL/BW stimuli images, the classification accuracy significantly increased to 96.47% by combining all frequency bands in the random forest algorithm. On the other hand, for the male group, using the gamma frequency band in the k-nearest neighbors algorithm led to a notable improvement in classification accuracy, reaching 95.32% for the Like task with CL/BW stimuli images. The study provides insights into the influence of black-white colors on marketing products and neuromarketing strategies. The research also revealed differences in the time taken for males and females to make Like and Dislike decisions, as well as the decision-making time for Like and Dislike CL/BW images. The female group took approximately 2.5 seconds to choose an image of a product, whilst the male group took 2.5-3 seconds. The study’s findings have significant implications for the field of neuromarketing, emphasizing the importance of careful stimulus selection and classifier choice for classification tasks.
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spelling doaj.art-06c1393f53e74f51a2dad7c6cce203732023-09-14T23:01:50ZengIEEEIEEE Access2169-35362023-01-0111937399375310.1109/ACCESS.2023.330881010230236Gender Differences in EEG Responses to Color and Black-White Images: Implications for Neuromarketing StrategiesAtefe Hassani0Amin Hekmatmanesh1https://orcid.org/0000-0002-6117-4683Ali Motie Nasrabadi2Department of Biomedical Engineering, Shahed University, Tehran, IranLaboratory of Intelligent Machines, Lappeenranta University of Technology, Lappeenranta, FinlandDepartment of Biomedical Engineering, Shahed University, Tehran, IranAnalyzing the decision of different genders during shopping is an interesting topic in the neuromarketing industry. This study explores the EEG signal acquisition of twenty subjects in response to Color and Black-White (CL/BW) images and analysis both linear and nonlinear features in different brain regions. The Wilcoxon Rank Sum statistical test was utilized to determine the significance of features in identifying discriminative channels and frequency bands. The results show that the activation of different bands and regions are dependent on the subject’s preference and the color of stimuli which are evaluated by spectral scalp map and power spectral density analysis on the the regions. Then, random forest, support vector machine, k-nearest neighbors, and linear discriminant analysis classifiers were also employed to identify the most significant active regions of different brain lobes in both human genders. For the female group in the Like task with CL/BW stimuli images, the classification accuracy significantly increased to 96.47% by combining all frequency bands in the random forest algorithm. On the other hand, for the male group, using the gamma frequency band in the k-nearest neighbors algorithm led to a notable improvement in classification accuracy, reaching 95.32% for the Like task with CL/BW stimuli images. The study provides insights into the influence of black-white colors on marketing products and neuromarketing strategies. The research also revealed differences in the time taken for males and females to make Like and Dislike decisions, as well as the decision-making time for Like and Dislike CL/BW images. The female group took approximately 2.5 seconds to choose an image of a product, whilst the male group took 2.5-3 seconds. The study’s findings have significant implications for the field of neuromarketing, emphasizing the importance of careful stimulus selection and classifier choice for classification tasks.https://ieeexplore.ieee.org/document/10230236/EEG signalclassifierdecision makinggenderneuromarketing
spellingShingle Atefe Hassani
Amin Hekmatmanesh
Ali Motie Nasrabadi
Gender Differences in EEG Responses to Color and Black-White Images: Implications for Neuromarketing Strategies
IEEE Access
EEG signal
classifier
decision making
gender
neuromarketing
title Gender Differences in EEG Responses to Color and Black-White Images: Implications for Neuromarketing Strategies
title_full Gender Differences in EEG Responses to Color and Black-White Images: Implications for Neuromarketing Strategies
title_fullStr Gender Differences in EEG Responses to Color and Black-White Images: Implications for Neuromarketing Strategies
title_full_unstemmed Gender Differences in EEG Responses to Color and Black-White Images: Implications for Neuromarketing Strategies
title_short Gender Differences in EEG Responses to Color and Black-White Images: Implications for Neuromarketing Strategies
title_sort gender differences in eeg responses to color and black white images implications for neuromarketing strategies
topic EEG signal
classifier
decision making
gender
neuromarketing
url https://ieeexplore.ieee.org/document/10230236/
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AT aminhekmatmanesh genderdifferencesineegresponsestocolorandblackwhiteimagesimplicationsforneuromarketingstrategies
AT alimotienasrabadi genderdifferencesineegresponsestocolorandblackwhiteimagesimplicationsforneuromarketingstrategies