AI RESEARCH

Diffusion Blend: Inference-Time Multi-Preference Alignment for Diffusion Models

arXiv CS.AI

ArXi:2505.18547v2 Announce Type: replace Reinforcement learning (RL) algorithms have been used recently to align diffusion models with downstream objectives such as aesthetic quality and text-image consistency by fine-tuning them to maximize a single reward function under a fixed KL regularization. However, this approach is inherently restrictive in practice, where alignment must balance multiple, often conflicting objectives. Moreover, user preferences vary across prompts, individuals, and deployment contexts, with varying tolerances for deviation from a pre-trained base model.