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Main Authors: Zhao, Yiran, Zhou, Lu, Xu, Xiaogang, Liu, Zhe, Wu, Jiafei, Fang, Liming
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.00590
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author Zhao, Yiran
Zhou, Lu
Xu, Xiaogang
Liu, Zhe
Wu, Jiafei
Fang, Liming
author_facet Zhao, Yiran
Zhou, Lu
Xu, Xiaogang
Liu, Zhe
Wu, Jiafei
Fang, Liming
contents As artificial intelligence (AI) is increasingly deployed across domains, ensuring fairness has become a core challenge. However, the field faces a "Tower of Babel'' dilemma: fairness metrics abound, yet their underlying philosophical assumptions often conflict, hindering unified paradigms-particularly in unified Multimodal Large Language Models (UMLLMs), where biases propagate systemically across tasks. To address this, we introduce the IRIS Benchmark, to our knowledge the first benchmark designed to synchronously evaluate the fairness of both understanding and generation tasks in UMLLMs. Enabled by our demographic classifier, ARES, and four supporting large-scale datasets, the benchmark is designed to normalize and aggregate arbitrary metrics into a high-dimensional "fairness space'', integrating 60 granular metrics across three dimensions-Ideal Fairness, Real-world Fidelity, and Bias Inertia & Steerability (IRIS). Through this benchmark, our evaluation of leading UMLLMs uncovers systemic phenomena such as the "generation gap'', individual inconsistencies like "personality splits'', and the "counter-stereotype reward'', while offering diagnostics to guide the optimization of their fairness capabilities. With its novel and extensible framework, the IRIS benchmark is capable of integrating evolving fairness metrics, ultimately helping to resolve the "Tower of Babel'' impasse. Project Page: https://iris-benchmark-web.vercel.app/
format Preprint
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institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Fair in Mind, Fair in Action? A Synchronous Benchmark for Understanding and Generation in UMLLMs
Zhao, Yiran
Zhou, Lu
Xu, Xiaogang
Liu, Zhe
Wu, Jiafei
Fang, Liming
Artificial Intelligence
As artificial intelligence (AI) is increasingly deployed across domains, ensuring fairness has become a core challenge. However, the field faces a "Tower of Babel'' dilemma: fairness metrics abound, yet their underlying philosophical assumptions often conflict, hindering unified paradigms-particularly in unified Multimodal Large Language Models (UMLLMs), where biases propagate systemically across tasks. To address this, we introduce the IRIS Benchmark, to our knowledge the first benchmark designed to synchronously evaluate the fairness of both understanding and generation tasks in UMLLMs. Enabled by our demographic classifier, ARES, and four supporting large-scale datasets, the benchmark is designed to normalize and aggregate arbitrary metrics into a high-dimensional "fairness space'', integrating 60 granular metrics across three dimensions-Ideal Fairness, Real-world Fidelity, and Bias Inertia & Steerability (IRIS). Through this benchmark, our evaluation of leading UMLLMs uncovers systemic phenomena such as the "generation gap'', individual inconsistencies like "personality splits'', and the "counter-stereotype reward'', while offering diagnostics to guide the optimization of their fairness capabilities. With its novel and extensible framework, the IRIS benchmark is capable of integrating evolving fairness metrics, ultimately helping to resolve the "Tower of Babel'' impasse. Project Page: https://iris-benchmark-web.vercel.app/
title Fair in Mind, Fair in Action? A Synchronous Benchmark for Understanding and Generation in UMLLMs
topic Artificial Intelligence
url https://arxiv.org/abs/2603.00590