LEADRE: Multi-Faceted Knowledge Enhanced LLM Empowered Display Advertisement Recommender System
Fengxin Li, Yi Li, Yue Liu, Chao Zhou, Yuan Wang, Xiaoxiang Deng, Wei Xue, Dapeng Liu, Lei Xiao, Haijie Gu, Jie Jiang, Hongyan Liu, Biao Qin, Jun He

TL;DR
LEADRE leverages large language models with knowledge alignment and intent-aware prompts to improve display ad recommendations, achieving significant online revenue lifts and efficient deployment at scale.
Contribution
The paper introduces LEADRE, a novel LLM-based framework with modules for knowledge alignment and intent-aware prompting, enhancing ad relevance and deployment efficiency.
Findings
LEADRE achieves 1.57% GMV lift on WeChat Channels.
LEADRE serves tens of billions of requests daily.
Offline experiments validate the effectiveness of each module.
Abstract
Display advertising provides significant value to advertisers, publishers, and users. Traditional display advertising systems utilize a multi-stage architecture consisting of retrieval, coarse ranking, and final ranking. However, conventional retrieval methods rely on ID-based learning to rank mechanisms and fail to adequately utilize the content information of ads, which hampers their ability to provide diverse recommendation lists. To address this limitation, we propose leveraging the extensive world knowledge of LLMs. However, three key challenges arise when attempting to maximize the effectiveness of LLMs: "How to capture user interests", "How to bridge the knowledge gap between LLMs and advertising system", and "How to efficiently deploy LLMs". To overcome these challenges, we introduce a novel LLM-based framework called LLM Empowered Display ADvertisement REcommender system…
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Taxonomy
TopicsWeb Data Mining and Analysis · Recommender Systems and Techniques · Video Analysis and Summarization
Methodstravel james · ALIGN
