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Local Flow Matching Generative Models

3 January 2025
Chen Xu
Xiuyuan Cheng
Yao Xie
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Abstract

Density estimation is a fundamental problem in statistics and machine learning. We consider a modern approach using flow-based generative models, and propose Local Flow Matching (LFM\texttt{LFM}LFM), a computational framework for density estimation based on such models, which learn a continuous and invertible flow to map noise samples to data samples. Unlike existing methods, LFM\texttt{LFM}LFM employs a simulation-free scheme and incrementally learns a sequence of Flow Matching sub-models. Each sub-model matches a diffusion process over a small step size in the data-to-noise direction. This iterative process reduces the gap between the two distributions interpolated by the sub-models, enabling smaller models with faster training times. Theoretically, we prove a generation guarantee of the proposed flow model regarding the χ2\chi^2χ2-divergence between the generated and true data distributions. Experimentally, we demonstrate the improved training efficiency and competitive generative performance of LFM\texttt{LFM}LFM compared to FM on the unconditional generation of tabular data and image datasets and its applicability to robotic manipulation policy learning.

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