TL;DR
HLLM-Creator introduces a hierarchical LLM framework that models user interests for personalized content generation, achieving high efficiency and factual consistency, demonstrated through improved ad title generation and online A/B testing.
Contribution
It presents a novel hierarchical LLM-based approach with a user clustering and pruning strategy, and a chain-of-thought data construction pipeline for personalized creative content.
Findings
Enhanced personalized title generation effectiveness
Significant efficiency improvements in large-scale deployment
Online A/B test shows 0.476% increase in ad performance
Abstract
AI-generated content technologies are widely used in content creation. However, current AIGC systems rely heavily on creators' inspiration, rarely generating truly user-personalized content. In real-world applications such as online advertising, a single product may have multiple selling points, with different users focusing on different features. This underscores the significant value of personalized, user-centric creative generation. Effective personalized content generation faces two main challenges: (1) accurately modeling user interests and integrating them into the content generation process while adhering to factual constraints, and (2) ensuring high efficiency and scalability to handle the massive user base in industrial scenarios. Additionally, the scarcity of personalized creative data in practice complicates model training, making data construction another key hurdle. We…
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