cs.AI updates on arXiv.org 10月08日 12:07
LLM个性化广告研究
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本文探讨了通过个性化广告提升大型语言模型(LLM)商业化潜力,通过实验发现用户难以察觉广告,并偏好含广告的LLM回复。研究开发了一款嵌入个性化广告的聊天机器人,并提出了Phi-4-Ads开源LLM。

arXiv:2409.15436v2 Announce Type: cross Abstract: Recent advances in large language models (LLMs) have enabled the creation of highly effective chatbots. However, the compute costs of widely deploying LLMs have raised questions about profitability. Companies have proposed exploring ad-based revenue streams for monetizing LLMs, which could serve as the new de facto platform for advertising. This paper investigates the implications of personalizing LLM advertisements to individual users via a between-subjects experiment with 179 participants. We developed a chatbot that embeds personalized product advertisements within LLM responses, inspired by similar forays by AI companies. The evaluation of our benchmarks showed that ad injection only slightly impacted LLM performance, particularly response desirability. Results revealed that participants struggled to detect ads, and even preferred LLM responses with hidden advertisements. Rather than clicking on our advertising disclosure, participants tried changing their advertising settings using natural language queries. We created an advertising dataset and an open-source LLM, Phi-4-Ads, fine-tuned to serve ads and flexibly adapt to user preferences.

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大型语言模型 个性化广告 LLM商业化
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