2024 KMIS International Conference 추계국제학술대회 (2024.11)바로가기
페이지
pp.283-288
저자
Changhyun Lee, Jiyong Park, Kyungjin Cha
언어
영어(ENG)
URL
https://www.earticle.net/Article/A472519
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원문정보
초록
영어
This study explores the practical application of large language models (LLMs) in marketing, addressing the challenges posed by their stochastic and context-agnostic nature. By employing a human-in-the-loop approach with domain experts, the study aligns LLM-generated content with specific contexts and evaluates the impact of semantic inconsistency on user engagement. In collaboration with a major South Korean TV manufacturer, the researchers conducted a randomized field experiment with 39,588 smart TV devices, testing LLM-generated persuasive messages to recommend TV content. The results demonstrate that context-relevant LLM-generated messages significantly improve click-through rates. However, semantically inconsistent messages diminish this effect. These findings underscore the need to mitigate LLMs' stochastic nature through human oversight to ensure consistent and effective user engagement.
목차
Abstract Introduction Literature Review Stochastic and Context-agnostic Nature of LLMs Contextual Targeting and Priming Effect Hypotheses Development Method Research Context: Smart TV Content Recommendation Message Preparation: Human-in-the-loop Process Experimental Design Analysis and Results Results of the Empirical Model Empirical Extensions Conclusions Contributions Limitations References
키워드
Large language modelstochastic naturecontextualizationhuman-in-the-loop.
저자
Changhyun Lee [ Department of Management Information Systems, Hanyang University ]
Jiyong Park [ Department of Management Information Systems, Terry College of Business, the University of Georgia ]
Kyungjin Cha [ Department of Management Information Systems, Hanyang University ]