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Hauptverfasser: Zhang, Yihang, Huang, Zimeng, Zhai, Ren, Kang, Yipeng, Wang, Tonghan
Format: Preprint
Veröffentlicht: 2026
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Online-Zugang:https://arxiv.org/abs/2605.09918
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author Zhang, Yihang
Huang, Zimeng
Zhai, Ren
Kang, Yipeng
Wang, Tonghan
author_facet Zhang, Yihang
Huang, Zimeng
Zhai, Ren
Kang, Yipeng
Wang, Tonghan
contents Reconciling platform revenue with user experience in LLM advertising motivates a data-centric foundation. We introduce NaiAD, the first comprehensive dataset for LLM-native advertising comprising 58,999 carefully constructed ad-embedded responses paired with user queries. NaiAD is organized around theoretically grounded evaluation metrics that separately and comprehensively capture user and commercial utility. To mitigate the dimensional collinearity of aligned LLMs, we propose a decoupled generation pipeline that produces structurally diverse samples, ranging from responses that explicitly disentangle stakeholder utilities to responses that are uniformly strong or weak across dimensions. We further provide score labels calibrated by a Variance-Calibrated Prediction-Powered Inference (VC-PPI) framework, aligning automated scoring with human annotations. Mechanistic analyses reveal that successful ad integration relies on reasoning paths that cluster into four distinct semantic strategies. Models leveraging NaiAD internalize these strategies to simultaneously improve user and commercial utility, while enabling independent control over these distinct objectives via in-context learning. Together, these results position NaiAD as a foundational infrastructure for developing future LLM-native ad systems.
format Preprint
id arxiv_https___arxiv_org_abs_2605_09918
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle NaiAD: Initiate Data-Driven Research for LLM Advertising
Zhang, Yihang
Huang, Zimeng
Zhai, Ren
Kang, Yipeng
Wang, Tonghan
Machine Learning
Artificial Intelligence
Computers and Society
Reconciling platform revenue with user experience in LLM advertising motivates a data-centric foundation. We introduce NaiAD, the first comprehensive dataset for LLM-native advertising comprising 58,999 carefully constructed ad-embedded responses paired with user queries. NaiAD is organized around theoretically grounded evaluation metrics that separately and comprehensively capture user and commercial utility. To mitigate the dimensional collinearity of aligned LLMs, we propose a decoupled generation pipeline that produces structurally diverse samples, ranging from responses that explicitly disentangle stakeholder utilities to responses that are uniformly strong or weak across dimensions. We further provide score labels calibrated by a Variance-Calibrated Prediction-Powered Inference (VC-PPI) framework, aligning automated scoring with human annotations. Mechanistic analyses reveal that successful ad integration relies on reasoning paths that cluster into four distinct semantic strategies. Models leveraging NaiAD internalize these strategies to simultaneously improve user and commercial utility, while enabling independent control over these distinct objectives via in-context learning. Together, these results position NaiAD as a foundational infrastructure for developing future LLM-native ad systems.
title NaiAD: Initiate Data-Driven Research for LLM Advertising
topic Machine Learning
Artificial Intelligence
Computers and Society
url https://arxiv.org/abs/2605.09918