LLM-driven e-commerce marketing content optimization: Balancing creativity and conversion
Haowei Yang
Computer science - computation and language, computer science - artificial intelligence, computer science - information retrieval
Abstract
As e-commerce competition intensifies, balancing creative content with conversion effectiveness becomes critical. Leveraging LLMs' language generation capabilities, we propose a framework that integrates prompt engineering, multi-objective fine-tuning, and post-processing to generate marketing copy that is both engaging and conversion-driven. Our fine-tuning method combines sentiment adjustment, diversity enhancement, and CTA embedding. Through offline evaluations and online A/B tests across cat
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Paper ID: 580ea10e-0088-4d13-bfaf-a50f5d1eda73Added: 10/26/2025