A new bimodal generative model is proposed for generating conditional and joint samples, accompanied with a training method with learning a succinct bottleneck representation. The proposed model, dubbed as the variational Wyner model, is designed based on two classical problems in network information theory -- distributed simulation and channel synthesis -- in which Wyner's common information arises as the fundamental limit on the succinctness of the common representation. The model is trained by minimizing the symmetric Kullback--Leibler divergence between variational and model distributions with regularization terms for common information, reconstruction consistency, and latent space matching terms, which is carried out via an adversarial...
We present a self-supervised method to disentangle factors of variation in high-dimensional data tha...
This thesis introduces the Mutual Information Machine (MIM), an autoencoder model for learning j...
Newly developed machine learning algorithms are heavily dependent on the choice of data representati...
Deep generative models have achieved conspicuous progress in realistic image synthesis with multifar...
Learning disentangled and interpretable representations is an important step towards accomplishing c...
This paper studies the cooperative learning of two generative flow models, in which the two models a...
Generative models have recently shown the ability to realistically generate data and model the distr...
Modeling joint probability distributions is an important task in a wide variety of fields. One popul...
We propose a notion of common information that allows one to quantify and separate the information t...
In this paper we propose a conditional generative modelling (CGM) approach for unsupervised disentan...
Learning a generative model with compositional structure is a fundamental problem in statistics. My ...
While self-supervised learning techniques are often used to mining implicit knowledge from unlabeled...
The Information Bottleneck theory provides a theoretical and computational framework for finding app...
In the past few years Generative models have become an interesting topic in the field of Machine Lea...
Wyner\u27s common information was originally defined for a pair of dependent discrete random variabl...
We present a self-supervised method to disentangle factors of variation in high-dimensional data tha...
This thesis introduces the Mutual Information Machine (MIM), an autoencoder model for learning j...
Newly developed machine learning algorithms are heavily dependent on the choice of data representati...
Deep generative models have achieved conspicuous progress in realistic image synthesis with multifar...
Learning disentangled and interpretable representations is an important step towards accomplishing c...
This paper studies the cooperative learning of two generative flow models, in which the two models a...
Generative models have recently shown the ability to realistically generate data and model the distr...
Modeling joint probability distributions is an important task in a wide variety of fields. One popul...
We propose a notion of common information that allows one to quantify and separate the information t...
In this paper we propose a conditional generative modelling (CGM) approach for unsupervised disentan...
Learning a generative model with compositional structure is a fundamental problem in statistics. My ...
While self-supervised learning techniques are often used to mining implicit knowledge from unlabeled...
The Information Bottleneck theory provides a theoretical and computational framework for finding app...
In the past few years Generative models have become an interesting topic in the field of Machine Lea...
Wyner\u27s common information was originally defined for a pair of dependent discrete random variabl...
We present a self-supervised method to disentangle factors of variation in high-dimensional data tha...
This thesis introduces the Mutual Information Machine (MIM), an autoencoder model for learning j...
Newly developed machine learning algorithms are heavily dependent on the choice of data representati...