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Autori principali: Yang, Hui, He, Daiwei, Jiang, Kevin, Park, Taejin, Li, Kungang, Luo, Jiajun, Chen, Yuying, Zhang, Xinyi, Wang, Sihan, He, Haoyu, Liu, Yu, Manoharan, Lakshmi, Xue, David, Barhate, Shubham, Su, Runze, Zhan, Duna, Leng, Ling, Ji, Siping, Zhuang, Jinfeng, Wu, Alice, Lu, Leo, Sun, Han, Liu, Zhifang
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2605.27856
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author Yang, Hui
He, Daiwei
Jiang, Kevin
Park, Taejin
Li, Kungang
Luo, Jiajun
Chen, Yuying
Zhang, Xinyi
Wang, Sihan
He, Haoyu
Liu, Yu
Manoharan, Lakshmi
Xue, David
Barhate, Shubham
Su, Runze
Zhan, Duna
Leng, Ling
Ji, Siping
Zhuang, Jinfeng
Wu, Alice
Lu, Leo
Sun, Han
Liu, Zhifang
author_facet Yang, Hui
He, Daiwei
Jiang, Kevin
Park, Taejin
Li, Kungang
Luo, Jiajun
Chen, Yuying
Zhang, Xinyi
Wang, Sihan
He, Haoyu
Liu, Yu
Manoharan, Lakshmi
Xue, David
Barhate, Shubham
Su, Runze
Zhan, Duna
Leng, Ling
Ji, Siping
Zhuang, Jinfeng
Wu, Alice
Lu, Leo
Sun, Han
Liu, Zhifang
contents Recommendation systems power engagement and monetization across feeds, ads, and short-video platforms, but translating the latest advances in Large Language Models into Recommendation Systems (RecSys) gains remains rare, particularly in advertising and production-scale real-world industry setups. Prior real-world LLM successes typically fall into three buckets: (a) generative retrieval that directly predicts the next items for candidate generation, (b) late-stage re-ranking that uses LLMs, and (c) auxiliary signal enrichment with LLMs. We introduce a complementary paradigm for ads: a fine-tuned open-source LLM used not as a ranker, but as an ads-specific ancillary predictor, forecasting likely advertisers from user profiles and histories. This LLM-driven advertiser prediction augments conventional candidate generation and provides informative priors to downstream ranking. Developed in a large-scale production advertising system, our approach produces substantial offline improvements and measurable online business impact, demonstrating that LLM world knowledge and predictive capacity can be efficiently harnessed. Beyond validating LLMs for ads applications, our results show that targeted ancillary predictions can unlock end-to-end gains across both retrieval and late-stage ranking, offering a practical path to LLM-enhanced recommendation at scale.
format Preprint
id arxiv_https___arxiv_org_abs_2605_27856
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Fine-Tuned LLM as a Complementary Predictor Improving Ads System
Yang, Hui
He, Daiwei
Jiang, Kevin
Park, Taejin
Li, Kungang
Luo, Jiajun
Chen, Yuying
Zhang, Xinyi
Wang, Sihan
He, Haoyu
Liu, Yu
Manoharan, Lakshmi
Xue, David
Barhate, Shubham
Su, Runze
Zhan, Duna
Leng, Ling
Ji, Siping
Zhuang, Jinfeng
Wu, Alice
Lu, Leo
Sun, Han
Liu, Zhifang
Information Retrieval
Artificial Intelligence
Recommendation systems power engagement and monetization across feeds, ads, and short-video platforms, but translating the latest advances in Large Language Models into Recommendation Systems (RecSys) gains remains rare, particularly in advertising and production-scale real-world industry setups. Prior real-world LLM successes typically fall into three buckets: (a) generative retrieval that directly predicts the next items for candidate generation, (b) late-stage re-ranking that uses LLMs, and (c) auxiliary signal enrichment with LLMs. We introduce a complementary paradigm for ads: a fine-tuned open-source LLM used not as a ranker, but as an ads-specific ancillary predictor, forecasting likely advertisers from user profiles and histories. This LLM-driven advertiser prediction augments conventional candidate generation and provides informative priors to downstream ranking. Developed in a large-scale production advertising system, our approach produces substantial offline improvements and measurable online business impact, demonstrating that LLM world knowledge and predictive capacity can be efficiently harnessed. Beyond validating LLMs for ads applications, our results show that targeted ancillary predictions can unlock end-to-end gains across both retrieval and late-stage ranking, offering a practical path to LLM-enhanced recommendation at scale.
title Fine-Tuned LLM as a Complementary Predictor Improving Ads System
topic Information Retrieval
Artificial Intelligence
url https://arxiv.org/abs/2605.27856