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Main Authors: Yu, Yaman, Liu, Yiren, Zhang, Jacky, Huang, Yun, Wang, Yang
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2509.08997
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author Yu, Yaman
Liu, Yiren
Zhang, Jacky
Huang, Yun
Wang, Yang
author_facet Yu, Yaman
Liu, Yiren
Zhang, Jacky
Huang, Yun
Wang, Yang
contents Large Language Models (LLMs) are increasingly used by teenagers and young adults in everyday life, ranging from emotional support and creative expression to educational assistance. However, their unique vulnerabilities and risk profiles remain under-examined in current safety benchmarks and moderation systems, leaving this population disproportionately exposed to harm. In this work, we present Youth AI Risk (YAIR), the first benchmark dataset designed to evaluate and improve the safety of youth LLM interactions. YAIR consists of 12,449 annotated conversation snippets spanning 78 fine grained risk types, grounded in a taxonomy of youth specific harms such as grooming, boundary violation, identity confusion, and emotional overreliance. We systematically evaluate widely adopted moderation models on YAIR and find that existing approaches substantially underperform in detecting youth centered risks, often missing contextually subtle yet developmentally harmful interactions. To address these gaps, we introduce YouthSafe, a real-time risk detection model optimized for youth GenAI contexts. YouthSafe significantly outperforms prior systems across multiple metrics on risk detection and classification, offering a concrete step toward safer and more developmentally appropriate AI interactions for young users.
format Preprint
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publishDate 2025
record_format arxiv
spellingShingle YouthSafe: A Youth-Centric Safety Benchmark and Safeguard Model for Large Language Models
Yu, Yaman
Liu, Yiren
Zhang, Jacky
Huang, Yun
Wang, Yang
Human-Computer Interaction
Large Language Models (LLMs) are increasingly used by teenagers and young adults in everyday life, ranging from emotional support and creative expression to educational assistance. However, their unique vulnerabilities and risk profiles remain under-examined in current safety benchmarks and moderation systems, leaving this population disproportionately exposed to harm. In this work, we present Youth AI Risk (YAIR), the first benchmark dataset designed to evaluate and improve the safety of youth LLM interactions. YAIR consists of 12,449 annotated conversation snippets spanning 78 fine grained risk types, grounded in a taxonomy of youth specific harms such as grooming, boundary violation, identity confusion, and emotional overreliance. We systematically evaluate widely adopted moderation models on YAIR and find that existing approaches substantially underperform in detecting youth centered risks, often missing contextually subtle yet developmentally harmful interactions. To address these gaps, we introduce YouthSafe, a real-time risk detection model optimized for youth GenAI contexts. YouthSafe significantly outperforms prior systems across multiple metrics on risk detection and classification, offering a concrete step toward safer and more developmentally appropriate AI interactions for young users.
title YouthSafe: A Youth-Centric Safety Benchmark and Safeguard Model for Large Language Models
topic Human-Computer Interaction
url https://arxiv.org/abs/2509.08997