PyTorch implementation for OCT-GAN Neural ODE-based Conditional Tabular GANs (WWW 2021)

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Deep Learning OCTGAN
Overview

OCT-GAN: Neural ODE-based Conditional Tabular GANs (OCT-GAN)

Code for reproducing the experiments in the paper:

Jayoung Kim*, Jinsung Jeon*, Jaehoon Lee, Jihyeon Hyeong, Noseong Park. "FFJORD: Free-form Continuous Dynamics for Scalable Reversible Generative Models." International World Wide Web Conference (2021). [arxiv]

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