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Field Matching: an Electrostatic Paradigm to Generate and Transfer Data

4 February 2025
Alexander Kolesov
Manukhov Stepan
Vladimir V. Palyulin
Alexander Korotin
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Abstract

We propose Electrostatic Field Matching (EFM), a novel method that is suitable for both generative modeling and distribution transfer tasks. Our approach is inspired by the physics of an electrical capacitor. We place source and target distributions on the capacitor plates and assign them positive and negative charges, respectively. We then learn the electrostatic field of the capacitor using a neural network approximator. To map the distributions to each other, we start at one plate of the capacitor and move the samples along the learned electrostatic field lines until they reach the other plate. We theoretically justify that this approach provably yields the distribution transfer. In practice, we demonstrate the performance of our EFM in toy and image data experiments.

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@article{kolesov2025_2502.02367,
  title={ Field Matching: an Electrostatic Paradigm to Generate and Transfer Data },
  author={ Alexander Kolesov and Manukhov Stepan and Vladimir V. Palyulin and Alexander Korotin },
  journal={arXiv preprint arXiv:2502.02367},
  year={ 2025 }
}
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