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Chi-square Generative Adversarial Network

Publication ,  Conference
Tao, C; Chen, L; Henao, R; Feng, J; Carin, L
Published in: Proceedings of Machine Learning Research
January 1, 2018

To assess the difference between real and synthetic data, Generative Adversarial Networks (GANs) are trained using a distribution discrepancy measure. Three widely employed measures are information-theoretic divergences, integral probability metrics, and Hilbert space discrepancy metrics. We elucidate the theoretical connections between these three popular GAN training criteria and propose a novel procedure, called χ2-GAN, that is conceptually simple, stable at training and resistant to mode collapse. Our procedure naturally generalizes to address the problem of simultaneous matching of multiple distributions. Further, we propose a resampling strategy that significantly improves sample quality, by repurpos-ing the trained critic function via an importance weighting mechanism. Experiments show that the proposed procedure improves stability and convergence, and yields state-of-art results on a wide range of generative modeling tasks.

Duke Scholars

Published In

Proceedings of Machine Learning Research

EISSN

2640-3498

Publication Date

January 1, 2018

Volume

80

Start / End Page

4887 / 4896
 

Citation

APA
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ICMJE
MLA
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Tao, C., Chen, L., Henao, R., Feng, J., & Carin, L. (2018). Chi-square Generative Adversarial Network. In Proceedings of Machine Learning Research (Vol. 80, pp. 4887–4896).
Tao, C., L. Chen, R. Henao, J. Feng, and L. Carin. “Chi-square Generative Adversarial Network.” In Proceedings of Machine Learning Research, 80:4887–96, 2018.
Tao C, Chen L, Henao R, Feng J, Carin L. Chi-square Generative Adversarial Network. In: Proceedings of Machine Learning Research. 2018. p. 4887–96.
Tao, C., et al. “Chi-square Generative Adversarial Network.” Proceedings of Machine Learning Research, vol. 80, 2018, pp. 4887–96.
Tao C, Chen L, Henao R, Feng J, Carin L. Chi-square Generative Adversarial Network. Proceedings of Machine Learning Research. 2018. p. 4887–4896.

Published In

Proceedings of Machine Learning Research

EISSN

2640-3498

Publication Date

January 1, 2018

Volume

80

Start / End Page

4887 / 4896