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Computing high-dimensional optimal transport by flow neural networks

Abstract

Flow-based models are widely used in generative tasks, including normalizing flow, where a neural network transports from a data distribution PP to a normal distribution. This work develops a flow-based model that transports from PP to an arbitrary QQ where both distributions are only accessible via finite samples. We propose to learn the dynamic optimal transport between PP and QQ by training a flow neural network. The model is trained to optimally find an invertible transport map between PP and QQ by minimizing the transport cost. The trained optimal transport flow subsequently allows for performing many downstream tasks, including infinitesimal density ratio estimation (DRE) and distribution interpolation in the latent space for generative models. The effectiveness of the proposed model on high-dimensional data is demonstrated by strong empirical performance on high-dimensional DRE, OT baselines, and image-to-image translation.

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@article{xu2025_2305.11857,
  title={ Computing high-dimensional optimal transport by flow neural networks },
  author={ Chen Xu and Xiuyuan Cheng and Yao Xie },
  journal={arXiv preprint arXiv:2305.11857},
  year={ 2025 }
}
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