LGOct 2, 2025

MIRA: Towards Mitigating Reward Hacking in Inference-Time Alignment of T2I Diffusion Models

arXiv:2510.01549v14 citationsh-index: 25
Originality Incremental advance
AI Analysis

This addresses a critical issue in aligning diffusion models with user preferences without costly fine-tuning, though it is an incremental improvement over existing inference-time methods.

The paper tackles reward hacking in inference-time alignment of text-to-image diffusion models, where models generate high-scoring images that deviate from prompts, and proposes MIRA, a training-free method that introduces an image-space constraint to prevent this drift while improving rewards, achieving over 60% win rates against baselines while preserving prompt adherence.

Diffusion models excel at generating images conditioned on text prompts, but the resulting images often do not satisfy user-specific criteria measured by scalar rewards such as Aesthetic Scores. This alignment typically requires fine-tuning, which is computationally demanding. Recently, inference-time alignment via noise optimization has emerged as an efficient alternative, modifying initial input noise to steer the diffusion denoising process towards generating high-reward images. However, this approach suffers from reward hacking, where the model produces images that score highly, yet deviate significantly from the original prompt. We show that noise-space regularization is insufficient and that preventing reward hacking requires an explicit image-space constraint. To this end, we propose MIRA (MItigating Reward hAcking), a training-free, inference-time alignment method. MIRA introduces an image-space, score-based KL surrogate that regularizes the sampling trajectory with a frozen backbone, constraining the output distribution so reward can increase without off-distribution drift (reward hacking). We derive a tractable approximation to KL using diffusion scores. Across SDv1.5 and SDXL, multiple rewards (Aesthetic, HPSv2, PickScore), and public datasets (e.g., Animal-Animal, HPDv2), MIRA achieves >60\% win rate vs. strong baselines while preserving prompt adherence; mechanism plots show reward gains with near-zero drift, whereas DNO drifts as compute increases. We further introduce MIRA-DPO, mapping preference optimization to inference time with a frozen backbone, extending MIRA to non-differentiable rewards without fine-tuning.

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