Towards Equitable AI: Detecting Bias in Using Large Language Models for Marketing
Berk Yilmaz, and Huthaifa I. Ashqar

TL;DR
This paper investigates biases in marketing slogans generated by large language models, revealing demographic disparities and emphasizing the importance of bias detection and mitigation for equitable AI in marketing.
Contribution
It introduces a systematic approach to detect demographic biases in LLM-generated marketing content and highlights the societal implications of such biases.
Findings
Marketing slogans vary significantly across demographic groups.
Women and younger individuals receive more distinct messaging.
Biases in LLM outputs can impact fairness and societal perceptions.
Abstract
The recent advances in large language models (LLMs) have revolutionized industries such as finance, marketing, and customer service by enabling sophisticated natural language processing tasks. However, the broad adoption of LLMs brings significant challenges, particularly in the form of social biases that can be embedded within their outputs. Biases related to gender, age, and other sensitive attributes can lead to unfair treatment, raising ethical concerns and risking both company reputation and customer trust. This study examined bias in finance-related marketing slogans generated by LLMs (i.e., ChatGPT) by prompting tailored ads targeting five demographic categories: gender, marital status, age, income level, and education level. A total of 1,700 slogans were generated for 17 unique demographic groups, and key terms were categorized into four thematic groups: empowerment, financial,…
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Taxonomy
TopicsSentiment Analysis and Opinion Mining
Methodstravel james
