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arxiv:2510.02300

Equilibrium Matching: Generative Modeling with Implicit Energy-Based Models

Published on Oct 2
· Submitted by Niels Rogge on Oct 8
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Abstract

Equilibrium Matching (EqM) is a generative modeling framework that learns an equilibrium gradient of an implicit energy landscape, enabling efficient sampling and outperforming traditional diffusion and flow models.

AI-generated summary

We introduce Equilibrium Matching (EqM), a generative modeling framework built from an equilibrium dynamics perspective. EqM discards the non-equilibrium, time-conditional dynamics in traditional diffusion and flow-based generative models and instead learns the equilibrium gradient of an implicit energy landscape. Through this approach, we can adopt an optimization-based sampling process at inference time, where samples are obtained by gradient descent on the learned landscape with adjustable step sizes, adaptive optimizers, and adaptive compute. EqM surpasses the generation performance of diffusion/flow models empirically, achieving an FID of 1.90 on ImageNet 256times256. EqM is also theoretically justified to learn and sample from the data manifold. Beyond generation, EqM is a flexible framework that naturally handles tasks including partially noised image denoising, OOD detection, and image composition. By replacing time-conditional velocities with a unified equilibrium landscape, EqM offers a tighter bridge between flow and energy-based models and a simple route to optimization-driven inference.

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