Bi-Discriminator Class-Conditional Tabular GAN
Machine Learning
2021-12-06 v2
Abstract
This paper introduces a bi-discriminator GAN for synthesizing tabular datasets containing continuous, binary, and discrete columns. Our proposed approach employs an adapted preprocessing scheme and a novel conditional term for the generator network to more effectively capture the input sample distributions. Additionally, we implement straightforward yet effective architectures for discriminator networks aiming at providing more discriminative gradient information to the generator. Our experimental results on four benchmarking public datasets corroborates the superior performance of our GAN both in terms of likelihood fitness metric and machine learning efficacy.
Cite
@article{arxiv.2111.06549,
title = {Bi-Discriminator Class-Conditional Tabular GAN},
author = {Mohammad Esmaeilpour and Nourhene Chaalia and Adel Abusitta and Francois-Xavier Devailly and Wissem Maazoun and Patrick Cardinal},
journal= {arXiv preprint arXiv:2111.06549},
year = {2021}
}
Comments
Submitted to Elsevier Pattern Recognition Letter