Commutative Lie Group VAE for Disentanglement Learning

06/07/2021
by   Xinqi Zhu, et al.
0

We view disentanglement learning as discovering an underlying structure that equivariantly reflects the factorized variations shown in data. Traditionally, such a structure is fixed to be a vector space with data variations represented by translations along individual latent dimensions. We argue this simple structure is suboptimal since it requires the model to learn to discard the properties (e.g. different scales of changes, different levels of abstractness) of data variations, which is an extra work than equivariance learning. Instead, we propose to encode the data variations with groups, a structure not only can equivariantly represent variations, but can also be adaptively optimized to preserve the properties of data variations. Considering it is hard to conduct training on group structures, we focus on Lie groups and adopt a parameterization using Lie algebra. Based on the parameterization, some disentanglement learning constraints are naturally derived. A simple model named Commutative Lie Group VAE is introduced to realize the group-based disentanglement learning. Experiments show that our model can effectively learn disentangled representations without supervision, and can achieve state-of-the-art performance without extra constraints.

READ FULL TEXT
research
06/01/2020

Learning Irreducible Representations of Noncommutative Lie Groups

Recent work has made exciting theoretical and practical progress towards...
research
04/03/2013

Lie Algebrized Gaussians for Image Representation

We present an image representation method which is derived from analyzin...
research
09/15/2021

Automatic Symmetry Discovery with Lie Algebra Convolutional Network

Existing equivariant neural networks for continuous groups require discr...
research
04/07/2021

GEM: Group Enhanced Model for Learning Dynamical Control Systems

Learning the dynamics of a physical system wherein an autonomous agent o...
research
03/08/2023

The Lie-Group Bayesian Learning Rule

The Bayesian Learning Rule provides a framework for generic algorithm de...
research
09/19/2020

Learning a Lie Algebra from Unlabeled Data Pairs

Deep convolutional networks (convnets) show a remarkable ability to lear...
research
04/06/2020

Parametrization of Neural Networks with Connected Abelian Lie Groups as Data Manifold

Neural nets have been used in an elusive number of scientific discipline...

Please sign up or login with your details

Forgot password? Click here to reset