Redirecting to original paper in 30 seconds...

Click below to go immediately or wait for automatic redirect

arxiv_ai 95% Match Research Paper AI Researchers,ML Engineers,AI Ethicists 2 weeks ago

FairGen: Controlling Sensitive Attributes for Fair Generations in Diffusion Models via Adaptive Latent Guidance

generative-ai › diffusion
📄 Abstract

Abstract: Text-to-image diffusion models often exhibit biases toward specific demographic groups, such as generating more males than females when prompted to generate images of engineers, raising ethical concerns and limiting their adoption. In this paper, we tackle the challenge of mitigating generation bias towards any target attribute value (e.g., "male" for "gender") in diffusion models while preserving generation quality. We propose FairGen, an adaptive latent guidance mechanism which controls the generation distribution during inference. In FairGen, a latent guidance module dynamically adjusts the diffusion process to enforce specific attributes, while a memory module tracks the generation statistics and steers latent guidance to align with the targeted fair distribution of the attribute values. Furthermore, we address the limitations of existing datasets by introducing the Holistic Bias Evaluation (HBE) benchmark, which covers diverse domains and incorporates complex prompts to assess bias more comprehensively. Extensive evaluations on HBE and Stable Bias datasets demonstrate that FairGen outperforms existing bias mitigation approaches, achieving substantial bias reduction (e.g., 68.5% gender bias reduction on Stable Diffusion 2). Ablation studies highlight FairGen's ability to flexibly control the output distribution at any user-specified granularity, ensuring adaptive and targeted bias mitigation.
Authors (7)
Mintong Kang
Vinayshekhar Bannihatti Kumar
Shamik Roy
Abhishek Kumar
Sopan Khosla
Balakrishnan Murali Narayanaswamy
+1 more
Submitted
February 25, 2025
arXiv Category
cs.LG
arXiv PDF

Key Contributions

FairGen introduces an adaptive latent guidance mechanism for diffusion models to mitigate generation bias towards specific attributes while preserving generation quality. It addresses limitations of existing datasets by proposing the Holistic Bias Evaluation (HBE) benchmark for comprehensive bias assessment.

Business Value

Enables the creation of more equitable and trustworthy AI-generated content, crucial for applications in media, advertising, and design where demographic representation matters.