English

C$^2$VAE: Gaussian Copula-based VAE Differing Disentangled from Coupled Representations with Contrastive Posterior

Machine Learning 2023-09-26 v1 Computer Vision and Pattern Recognition Machine Learning

Abstract

We present a self-supervised variational autoencoder (VAE) to jointly learn disentangled and dependent hidden factors and then enhance disentangled representation learning by a self-supervised classifier to eliminate coupled representations in a contrastive manner. To this end, a Contrastive Copula VAE (C2^2VAE) is introduced without relying on prior knowledge about data in the probabilistic principle and involving strong modeling assumptions on the posterior in the neural architecture. C2^2VAE simultaneously factorizes the posterior (evidence lower bound, ELBO) with total correlation (TC)-driven decomposition for learning factorized disentangled representations and extracts the dependencies between hidden features by a neural Gaussian copula for copula coupled representations. Then, a self-supervised contrastive classifier differentiates the disentangled representations from the coupled representations, where a contrastive loss regularizes this contrastive classification together with the TC loss for eliminating entangled factors and strengthening disentangled representations. C2^2VAE demonstrates a strong effect in enhancing disentangled representation learning. C2^2VAE further contributes to improved optimization addressing the TC-based VAE instability and the trade-off between reconstruction and representation.

Keywords

Cite

@article{arxiv.2309.13303,
  title  = {C$^2$VAE: Gaussian Copula-based VAE Differing Disentangled from Coupled Representations with Contrastive Posterior},
  author = {Zhangkai Wu and Longbing Cao},
  journal= {arXiv preprint arXiv:2309.13303},
  year   = {2023}
}
R2 v1 2026-06-28T12:30:16.162Z