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The impact of artificial intelligence-based advertisement placement on consumer purchase sentiment

Xue Guo1, Xuerui Han2,*

1Faculty of Health and Wellness, City University of Macau, Macao 999078, China

2Department of Applied Psychology and Human Development, University of Toronto, Toronto M5S1A1, Ontario, Canada



Well-bing Sciences Review 2025, 1(3); https://doi.org/10.54844/wsr.2025.1030
Submitted19 Mar 2026
Revised19 Mar 2026
Accepted19 Mar 2026
Published19 Mar 2026
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Cite This Article
Abstract

The advertising industry is embracing artificial intelligence technologies to improve the accuracy and effectiveness of advertisements. In today's digital marketing field, artificial intelligence (AI)-based ad implementation has become a key strategy to increase consumers' purchase intention. In terms of consumers' perceived value, how to effectively influence consumers' perceived benefits, risks and final purchase decisions through intelligent ad implantation has become a hot topic. This study explores advertisement implantation based on AI and its impact on consumers' perceived value and purchase intention. Results indicate that personalized and relevant AI-driven ad placements significantly enhance perceived benefits, thereby increasing purchase intent. Additionally, ad delivery through reputable platforms mitigates perceived risks, further fostering positive purchase sentiment. Conversely, certain ad display methods may not consistently enhance perceived benefits and could detract from consumer engagement if not well-aligned with audience expectations. These findings offer strategic insights into optimizing AI applications in digital advertising, underscoring the importance of aligning ad content with consumer expectations to maximize positive emotional responses and drive purchasing behavior.

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