CFASL: Composite Factor-Aligned Symmetry Learning for Disentanglement in Variational AutoEncoder

Abstract

Symmetries of input and latent vectors have provided valuable insights for disentanglement learning in VAEs. However, only a few works were proposed as an unsupervised method, and even these works require known factor information in training data. We propose a novel method, Composite Factor-Aligned Symmetry Learning (CFASL), which is integrated into VAEs for learning symmetry-based disentanglement in unsupervised learning without any knowledge of the dataset factor information. CFASL incorporates three novel features for learning symmetry-based disentanglement: 1) Injecting inductive bias to align latent vector dimensions to factor-aligned symmetries within an explicit learnable symmetry code-book 2) Learning a composite symmetry to express unknown factors change between two random samples by learning factor-aligned symmetries within the codebook 3) Inducing group equivariant encoder and decoder in training VAEs with the two conditions. In addition, we propose an extended evaluation metric for multi-factor changes in comparison to disentanglement evaluation in VAEs. In quantitative and in-depth qualitative analysis, CFASL demonstrates a significant improvement of disentanglement in single-factor change, and multi-factor change conditions compared to state-of-the-art methods.

Cite

Text

Jung et al. "CFASL: Composite Factor-Aligned Symmetry Learning for Disentanglement in Variational AutoEncoder." Transactions on Machine Learning Research, 2024.

Markdown

[Jung et al. "CFASL: Composite Factor-Aligned Symmetry Learning for Disentanglement in Variational AutoEncoder." Transactions on Machine Learning Research, 2024.](https://mlanthology.org/tmlr/2024/jung2024tmlr-cfasl/)

BibTeX

@article{jung2024tmlr-cfasl,
  title     = {{CFASL: Composite Factor-Aligned Symmetry Learning for Disentanglement in Variational AutoEncoder}},
  author    = {Jung, Hee-Jun and Jeong, Jaehyoung and Kim, Kangil},
  journal   = {Transactions on Machine Learning Research},
  year      = {2024},
  url       = {https://mlanthology.org/tmlr/2024/jung2024tmlr-cfasl/}
}