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Energy-Based Flow Matching for Generating 3D Molecular Structure

26 August 2025
Wenyin Zhou
Christopher Iliffe Sprague
Vsevolod Viliuga
Matteo Tadiello
Arne Elofsson
Hossein Azizpour
    DiffM
ArXiv (abs)PDFHTMLGithub (2★)
Main:8 Pages
11 Figures
Bibliography:4 Pages
10 Tables
Appendix:12 Pages
Abstract

Molecular structure generation is a fundamental problem that involves determining the 3D positions of molecules' constituents. It has crucial biological applications, such as molecular docking, protein folding, and molecular design. Recent advances in generative modeling, such as diffusion models and flow matching, have made great progress on these tasks by modeling molecular conformations as a distribution. In this work, we focus on flow matching and adopt an energy-based perspective to improve training and inference of structure generation models. Our view results in a mapping function, represented by a deep network, that is directly learned to \textit{iteratively} map random configurations, i.e. samples from the source distribution, to target structures, i.e. points in the data manifold. This yields a conceptually simple and empirically effective flow matching setup that is theoretically justified and has interesting connections to fundamental properties such as idempotency and stability, as well as the empirically useful techniques such as structure refinement in AlphaFold. Experiments on protein docking as well as protein backbone generation consistently demonstrate the method's effectiveness, where it outperforms recent baselines of task-associated flow matching and diffusion models, using a similar computational budget.

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