LGJun 18, 2025

Provable Maximum Entropy Manifold Exploration via Diffusion Models

arXiv:2506.15385v113 citationsh-index: 7ICML
Originality Incremental advance
AI Analysis

This addresses the problem of generating novel designs in decision-making applications like scientific discovery, representing an incremental advance in leveraging diffusion models for exploration.

The paper tackles the challenge of using generative models for exploration without explicit uncertainty quantification by framing exploration as entropy maximization over a diffusion model's data manifold, and demonstrates promising results on synthetic and high-dimensional text-to-image tasks.

Exploration is critical for solving real-world decision-making problems such as scientific discovery, where the objective is to generate truly novel designs rather than mimic existing data distributions. In this work, we address the challenge of leveraging the representational power of generative models for exploration without relying on explicit uncertainty quantification. We introduce a novel framework that casts exploration as entropy maximization over the approximate data manifold implicitly defined by a pre-trained diffusion model. Then, we present a novel principle for exploration based on density estimation, a problem well-known to be challenging in practice. To overcome this issue and render this method truly scalable, we leverage a fundamental connection between the entropy of the density induced by a diffusion model and its score function. Building on this, we develop an algorithm based on mirror descent that solves the exploration problem as sequential fine-tuning of a pre-trained diffusion model. We prove its convergence to the optimal exploratory diffusion model under realistic assumptions by leveraging recent understanding of mirror flows. Finally, we empirically evaluate our approach on both synthetic and high-dimensional text-to-image diffusion, demonstrating promising results.

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