Convergence of Flow-Based Generative Models via Proximal Gradient Descent in Wasserstein Space

Authors

Cheng, X; Lu, J; Tan, Y; Xie, Y

Abstract

Flow-based generative models enjoy certain advantages in computing the data generation and the likelihood, and have recently shown competitive empirical performance. Compared to the accumulating theoretical studies on related score-based diffusion models, analysis of flow-based models, which are deterministic in both forward (data-to-noise) and reverse (noise-to-data) directions, remain sparse. In this paper, we provide a theoretical guarantee of generating data distribution by a progressive flow model, the so-called JKO flow model, which implements the Jordan-Kinderleherer-Otto (JKO) scheme in a normalizing flow network. Leveraging the exponential convergence of the proximal gradient descent (GD) in Wasserstein space, we prove the Kullback-Leibler (KL) guarantee of data generation by a JKO flow model to be O(ɛ2) when using N ≲ log(1/ɛ) many JKO steps (N Residual Blocks in the flow) where ɛ is the error in the per-step first-order condition. The assumption on data density is merely a finite second moment, and the theory extends to data distributions without density and when there are inversion errors in the reverse process where we obtain KL-W2 mixed error guarantees. The non-asymptotic convergence rate of the JKO-type W2-proximal GD is proved for a general class of convex objective functionals that includes the KL divergence as a special case, which can be of independent interest. The analysis framework can extend to other first-order Wasserstein optimization schemes applied to flow-based generative models.

Citation

Cheng, X., J. Lu, Y. Tan, and Y. Xie. “Convergence of Flow-Based Generative Models via Proximal Gradient Descent in Wasserstein Space.” IEEE Transactions on Information Theory 70, no. 11 (January 1, 2024): 8087–8106. https://doi.org/10.1109/TIT.2024.3422412.

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