Paper Number
ICIS2025-2034
Paper Type
Complete
Abstract
This paper introduces a theory-driven AIGC system for marketing image generation, grounded in visual marketing theory and implemented through structured prompt engineering, AI-based image generation, and a LLM-guided evaluation and selection process. The system employs a multi-agent architecture—comprising prompting, generation, and evaluation agents—to ensure content diversity, product authenticity, and theoretical alignment. Empirical evaluations across Meta Ads and Prolific show that the system significantly outperforms baseline AIGC—which lack theoretical grounding—in marketing effectiveness, and performs competitively with PGC—exceeding it in ad engagement while trailing in perceived effectiveness. The system also supports scalable theory validation through automated, controlled image generation. This work offers a practical and theoretically grounded framework for enhancing the reliability, adaptability, and research utility of generative AI in both commercial and academic contexts. The complete image sets and reproduction details are available via our Github repository at https://github.com/sapiens-agent/AIGC.
Recommended Citation
Yang, Bruce; Huang, Junjing; Li, Xiaofan; and Qiao, Dandan, "AIGC on Marketing: A Theory-driven Design System and Empirical Evaluation" (2025). ICIS 2025 Proceedings. 21.
https://aisel.aisnet.org/icis2025/gen_ai/gen_ai/21
AIGC on Marketing: A Theory-driven Design System and Empirical Evaluation
This paper introduces a theory-driven AIGC system for marketing image generation, grounded in visual marketing theory and implemented through structured prompt engineering, AI-based image generation, and a LLM-guided evaluation and selection process. The system employs a multi-agent architecture—comprising prompting, generation, and evaluation agents—to ensure content diversity, product authenticity, and theoretical alignment. Empirical evaluations across Meta Ads and Prolific show that the system significantly outperforms baseline AIGC—which lack theoretical grounding—in marketing effectiveness, and performs competitively with PGC—exceeding it in ad engagement while trailing in perceived effectiveness. The system also supports scalable theory validation through automated, controlled image generation. This work offers a practical and theoretically grounded framework for enhancing the reliability, adaptability, and research utility of generative AI in both commercial and academic contexts. The complete image sets and reproduction details are available via our Github repository at https://github.com/sapiens-agent/AIGC.
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