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Title | Perception of Artificial Intelligence: GSR Analysis and Face Detection |
Authors |
Liulov, Oleksii Valentynovych
Pimonenko, Tetiana Volodymyrivna Infante-Moro, A. Kwilinski, Aleksy |
ORCID |
http://orcid.org/0000-0002-4865-7306 http://orcid.org/0000-0001-6442-3684 http://orcid.org/0000-0001-6318-4001 |
Keywords |
emotion neuromarketing artificial intelligence consumer |
Type | Article |
Date of Issue | 2024 |
URI | https://essuir.sumdu.edu.ua/handle/123456789/97668 |
Publisher | Institute for International Cooperation Development |
License | Creative Commons Attribution 4.0 International License |
Citation | Lyulyov, O., Pimonenko, T., Infante-Moro, A., & Kwilinski, A. (2024). Perception of Artificial Intelligence: GSR Analysis and Face Detection. Virtual Economics, 7(2), 7–30. https://doi.org/10.34021/ve.2024.07.02(1). |
Abstract |
This study explored the perception of artificial intelligence (AI) through GSR
analysis and facial expression detection across eight different video stimuli. The results indicate
that one video elicited the highest cognitive engagement, while another showed significant
engagement through both the frequency and intensity of responses. Certain videos displayed a
lower frequency but higher intensity of responses. The Shapiro‒Wilk and Levene’s tests
validated the use of ANOVA, confirming the normality and homogeneity of variances. Despite
variations in mean GSR peaks per minute, ANOVA revealed no significant differences in
physiological responses among the different interaction types. Gender analysis revealed similar
high physiological responses to AI stimuli for both males and females, with most stimuli
eliciting statistically significant GSR peaks per minute. The Affectiva AFFDEX SDK classifier
analysed emotional responses, revealing that joy was predominantly higher in one video, while
another elicited the most sadness. Anger and fear were nearly non-existent, and contempt
varied, with one video showing the highest response. Disgust and surprise responses were
generally low. These findings highlight the importance of emotional content in engaging
viewers and the utility of GSR and facial expression analysis in understanding AI's impact on
user perception. This research provides insights into cognitive and emotional engagement with
AI-related stimuli, emphasizing the need for tailored content to enhance user interaction. The
study's implications extend to marketing, education, and healthcare, where optimizing user
engagement with AI can lead to improved outcomes and satisfaction. |
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