Zelun Tony Zhang, Nick Von Felten, et al.
CHI 2026
We introduce new families of Integral Probability Metrics (IPM) for training Generative Adversarial Networks (GAN). Our IPMs are based on matching statistics of distributions embedded in a finite dimensional feature space. Mean and co-variance feature matching IPMs allow for stable training of GANs, which we will call McGan. McGan minimizes a meaningful loss between distributions.
Zelun Tony Zhang, Nick Von Felten, et al.
CHI 2026
Miriam Rateike, Brian Mboya, et al.
DLI 2025
Jung koo Kang
NeurIPS 2025
Werner Geyer, Jessica He, et al.
CHIWORK 2025