CVAICYDec 28, 2024

INFELM: In-depth Fairness Evaluation of Large Text-To-Image Models

arXiv:2501.01973v32 citationsh-index: 1
Originality Incremental advance
AI Analysis

This addresses ethical challenges in multi-modal AI systems for developers and researchers, though it is incremental as it builds on existing evaluation frameworks.

The paper tackles the problem of fairness evaluation in large text-to-image models by introducing INFELM, which includes an advanced skintone classifier improving precision by at least 16.04% and finds that existing models generally fail to meet fairness criteria with representation bias being more pronounced than alignment errors.

The rapid development of large language models (LLMs) and large vision models (LVMs) have propelled the evolution of multi-modal AI systems, which have demonstrated the remarkable potential for industrial applications by emulating human-like cognition. However, they also pose significant ethical challenges, including amplifying harmful content and reinforcing societal biases. For instance, biases in some industrial image generation models highlighted the urgent need for robust fairness assessments. Most existing evaluation frameworks focus on the comprehensiveness of various aspects of the models, but they exhibit critical limitations, including insufficient attention to content generation alignment and social bias-sensitive domains. More importantly, their reliance on pixel-detection techniques is prone to inaccuracies. To address these issues, this paper presents INFELM, an in-depth fairness evaluation on widely-used text-to-image models. Our key contributions are: (1) an advanced skintone classifier incorporating facial topology and refined skin pixel representation to enhance classification precision by at least 16.04%, (2) a bias-sensitive content alignment measurement for understanding societal impacts, (3) a generalizable representation bias evaluation for diverse demographic groups, and (4) extensive experiments analyzing large-scale text-to-image model outputs across six social-bias-sensitive domains. We find that existing models in the study generally do not meet the empirical fairness criteria, and representation bias is generally more pronounced than alignment errors. INFELM establishes a robust benchmark for fairness assessment, supporting the development of multi-modal AI systems that align with ethical and human-centric principles.

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