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Deep conditional distribution learning via conditional F\'ollmer flow

Authors :
Chang, Jinyuan
Ding, Zhao
Jiao, Yuling
Li, Ruoxuan
Yang, Jerry Zhijian
Publication Year :
2024

Abstract

We introduce an ordinary differential equation (ODE) based deep generative method for learning conditional distributions, named Conditional F\"ollmer Flow. Starting from a standard Gaussian distribution, the proposed flow could approximate the target conditional distribution very well when the time is close to 1. For effective implementation, we discretize the flow with Euler's method where we estimate the velocity field nonparametrically using a deep neural network. Furthermore, we also establish the convergence result for the Wasserstein-2 distance between the distribution of the learned samples and the target conditional distribution, providing the first comprehensive end-to-end error analysis for conditional distribution learning via ODE flow. Our numerical experiments showcase its effectiveness across a range of scenarios, from standard nonparametric conditional density estimation problems to more intricate challenges involving image data, illustrating its superiority over various existing conditional density estimation methods.<br />Comment: The original title of this paper is "Deep Conditional Generative Learning: Model and Error Analysis"

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2402.01460
Document Type :
Working Paper