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Main Authors: He, Yuxiang, Zhao, Jian, Yuan, Yuchen, Zhang, Tianle, Cai, Wei, Cheng, Haojie, Shi, Ziyan, Zhu, Ming, Tang, Haichuan, Zhang, Chi, Li, Xuelong
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.02530
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author He, Yuxiang
Zhao, Jian
Yuan, Yuchen
Zhang, Tianle
Cai, Wei
Cheng, Haojie
Shi, Ziyan
Zhu, Ming
Tang, Haichuan
Zhang, Chi
Li, Xuelong
author_facet He, Yuxiang
Zhao, Jian
Yuan, Yuchen
Zhang, Tianle
Cai, Wei
Cheng, Haojie
Shi, Ziyan
Zhu, Ming
Tang, Haichuan
Zhang, Chi
Li, Xuelong
contents The exponential growth of digital content presents significant challenges for content safety. Current moderation systems, often based on single models or fixed pipelines, exhibit limitations in identifying implicit risks and providing interpretable judgment processes. To address these issues, we propose Aetheria, a multimodal interpretable content safety framework based on multi-agent debate and collaboration.Employing a collaborative architecture of five core agents, Aetheria conducts in-depth analysis and adjudication of multimodal content through a dynamic, mutually persuasive debate mechanism, which is grounded by RAG-based knowledge retrieval.Comprehensive experiments on our proposed benchmark (AIR-Bench) validate that Aetheria not only generates detailed and traceable audit reports but also demonstrates significant advantages over baselines in overall content safety accuracy, especially in the identification of implicit risks. This framework establishes a transparent and interpretable paradigm, significantly advancing the field of trustworthy AI content moderation.
format Preprint
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institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Aetheria: A multimodal interpretable content safety framework based on multi-agent debate and collaboration
He, Yuxiang
Zhao, Jian
Yuan, Yuchen
Zhang, Tianle
Cai, Wei
Cheng, Haojie
Shi, Ziyan
Zhu, Ming
Tang, Haichuan
Zhang, Chi
Li, Xuelong
Artificial Intelligence
The exponential growth of digital content presents significant challenges for content safety. Current moderation systems, often based on single models or fixed pipelines, exhibit limitations in identifying implicit risks and providing interpretable judgment processes. To address these issues, we propose Aetheria, a multimodal interpretable content safety framework based on multi-agent debate and collaboration.Employing a collaborative architecture of five core agents, Aetheria conducts in-depth analysis and adjudication of multimodal content through a dynamic, mutually persuasive debate mechanism, which is grounded by RAG-based knowledge retrieval.Comprehensive experiments on our proposed benchmark (AIR-Bench) validate that Aetheria not only generates detailed and traceable audit reports but also demonstrates significant advantages over baselines in overall content safety accuracy, especially in the identification of implicit risks. This framework establishes a transparent and interpretable paradigm, significantly advancing the field of trustworthy AI content moderation.
title Aetheria: A multimodal interpretable content safety framework based on multi-agent debate and collaboration
topic Artificial Intelligence
url https://arxiv.org/abs/2512.02530