Faces in advertising: exploring the interplay of attractiveness, realness categorisation, and purchase intentions

While digital ad spending is projected to soar in Singapore, a new player emerges – artificial intelligence. Powerful AI tools like Generative Adversarial Networks (GANs) promise significant cost savings in content creation. Particularly, the emergence of hyper realistic AI-generated faces may have...

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Main Author: Koh, Jing Han
Other Authors: Xu Hong
Format: Final Year Project (FYP)
Language:English
Published: Nanyang Technological University 2024
Subjects:
Online Access:https://hdl.handle.net/10356/177872
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author Koh, Jing Han
author2 Xu Hong
author_facet Xu Hong
Koh, Jing Han
author_sort Koh, Jing Han
collection NTU
description While digital ad spending is projected to soar in Singapore, a new player emerges – artificial intelligence. Powerful AI tools like Generative Adversarial Networks (GANs) promise significant cost savings in content creation. Particularly, the emergence of hyper realistic AI-generated faces may have the potential to upend the marketing industry. Past research has shown that faces are influential in advertising, with attractive faces increasing purchase intentions (PI), especially with paired with a related product. But can AI replicate this effect? To understand this, our study examined how FA, stimuli type (AI/Real faces), and participant categorisation (perceived AI/Real) affect PI. Employing a combination of Pixlr-generated AI faces and faces from an online research database, we presented these stimuli to 174 Singaporean participants (primarily Chinese undergraduates from NTU). PI was measured using a 4-item Purchase Intentions measure (PIMA). Our analyses (multiple regression and repeated-measures ANOVA) produced a surprising outcome: no significant difference in PI between AI and human faces in ads. Interestingly, even awareness of the manipulation (AI/Real) did not alter this effect. No interaction effects were found. However, FA remained significant: more attractive faces – whether AI or real – increased PI. Demographic factors, such as race and gender, subtly influenced PI, adding additional complexity to ad outcomes. Through this exploration, we hope to inform marketers on the suitability of cost-effective generative strategies as advertising alternatives. Future research may explore demographic influences on PI towards AI-aided ads and work towards validating these findings in real-world applications, such as through A/B testing.
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spelling ntu-10356/1778722024-06-09T15:31:45Z Faces in advertising: exploring the interplay of attractiveness, realness categorisation, and purchase intentions Koh, Jing Han Xu Hong School of Social Sciences XUHONG@ntu.edu.sg Computer and Information Science Social Sciences Advertisements AI faces Facial attractiveness Purchase intentions Marketing AI While digital ad spending is projected to soar in Singapore, a new player emerges – artificial intelligence. Powerful AI tools like Generative Adversarial Networks (GANs) promise significant cost savings in content creation. Particularly, the emergence of hyper realistic AI-generated faces may have the potential to upend the marketing industry. Past research has shown that faces are influential in advertising, with attractive faces increasing purchase intentions (PI), especially with paired with a related product. But can AI replicate this effect? To understand this, our study examined how FA, stimuli type (AI/Real faces), and participant categorisation (perceived AI/Real) affect PI. Employing a combination of Pixlr-generated AI faces and faces from an online research database, we presented these stimuli to 174 Singaporean participants (primarily Chinese undergraduates from NTU). PI was measured using a 4-item Purchase Intentions measure (PIMA). Our analyses (multiple regression and repeated-measures ANOVA) produced a surprising outcome: no significant difference in PI between AI and human faces in ads. Interestingly, even awareness of the manipulation (AI/Real) did not alter this effect. No interaction effects were found. However, FA remained significant: more attractive faces – whether AI or real – increased PI. Demographic factors, such as race and gender, subtly influenced PI, adding additional complexity to ad outcomes. Through this exploration, we hope to inform marketers on the suitability of cost-effective generative strategies as advertising alternatives. Future research may explore demographic influences on PI towards AI-aided ads and work towards validating these findings in real-world applications, such as through A/B testing. Bachelor's degree 2024-06-03T00:59:03Z 2024-06-03T00:59:03Z 2024 Final Year Project (FYP) Koh, J. H. (2024). Faces in advertising: exploring the interplay of attractiveness, realness categorisation, and purchase intentions. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/177872 https://hdl.handle.net/10356/177872 en application/pdf Nanyang Technological University
spellingShingle Computer and Information Science
Social Sciences
Advertisements
AI faces
Facial attractiveness
Purchase intentions
Marketing
AI
Koh, Jing Han
Faces in advertising: exploring the interplay of attractiveness, realness categorisation, and purchase intentions
title Faces in advertising: exploring the interplay of attractiveness, realness categorisation, and purchase intentions
title_full Faces in advertising: exploring the interplay of attractiveness, realness categorisation, and purchase intentions
title_fullStr Faces in advertising: exploring the interplay of attractiveness, realness categorisation, and purchase intentions
title_full_unstemmed Faces in advertising: exploring the interplay of attractiveness, realness categorisation, and purchase intentions
title_short Faces in advertising: exploring the interplay of attractiveness, realness categorisation, and purchase intentions
title_sort faces in advertising exploring the interplay of attractiveness realness categorisation and purchase intentions
topic Computer and Information Science
Social Sciences
Advertisements
AI faces
Facial attractiveness
Purchase intentions
Marketing
AI
url https://hdl.handle.net/10356/177872
work_keys_str_mv AT kohjinghan facesinadvertisingexploringtheinterplayofattractivenessrealnesscategorisationandpurchaseintentions