This work studies the class of algorithms for learning with side-information that emerge by extending generative models with embedded context-related variables. Using finite mixture models (FMM) as the prototypical Bayesian network, we show that maximum-likelihood estimation (MLE) of parameters through expectation-maximization (EM) improves over the regular unsupervised case and can approach the performances of supervised learning, despite the absence of any explicit ground truth data labeling. By direct application of the missing information principle (MIP), the algorithms' performances are proven to range between the conventional supervised and unsupervised MLE extremities proportionally to the information content of the contextual assist...
Statistical learning with missing or hidden information is ubiquitous in many practical problems. Fo...
The learning of variational inference can be widely seen as first estimating the class assignment va...
Recent advances in applying deep neural networks to Bayesian Modelling, sparked resurgence of in- te...
This work studies the class of algorithms for learning with side-information that emerge by extendin...
This work studies the class of algorithms for learning with side-information that emerges by extendi...
This work studies the class of algorithms for learning with side-information that emerges by extendi...
This work introduces algorithms able to exploit contextual information in order to improve maximum-l...
In this paper we propose a conditional generative modelling (CGM) approach for unsupervised disentan...
In this thesis, we investigate various approaches for generative modeling, with a special emphasis o...
We build up the mathematical connection between the "Expectation-Maximization" (EM) algori...
We consider the problem of learning deep gener-ative models from data. We formulate a method that ge...
Abstract—In data-mining applications, we are frequently faced with a large fraction of missing entri...
Deep generative models allow us to learn hidden representations of data and generate new examples. T...
context-based model Markov models have been a keystone in Artificial Intelligence for many decades. ...
Deep generative models with latent variables have been used lately to learn joint representations an...
Statistical learning with missing or hidden information is ubiquitous in many practical problems. Fo...
The learning of variational inference can be widely seen as first estimating the class assignment va...
Recent advances in applying deep neural networks to Bayesian Modelling, sparked resurgence of in- te...
This work studies the class of algorithms for learning with side-information that emerge by extendin...
This work studies the class of algorithms for learning with side-information that emerges by extendi...
This work studies the class of algorithms for learning with side-information that emerges by extendi...
This work introduces algorithms able to exploit contextual information in order to improve maximum-l...
In this paper we propose a conditional generative modelling (CGM) approach for unsupervised disentan...
In this thesis, we investigate various approaches for generative modeling, with a special emphasis o...
We build up the mathematical connection between the "Expectation-Maximization" (EM) algori...
We consider the problem of learning deep gener-ative models from data. We formulate a method that ge...
Abstract—In data-mining applications, we are frequently faced with a large fraction of missing entri...
Deep generative models allow us to learn hidden representations of data and generate new examples. T...
context-based model Markov models have been a keystone in Artificial Intelligence for many decades. ...
Deep generative models with latent variables have been used lately to learn joint representations an...
Statistical learning with missing or hidden information is ubiquitous in many practical problems. Fo...
The learning of variational inference can be widely seen as first estimating the class assignment va...
Recent advances in applying deep neural networks to Bayesian Modelling, sparked resurgence of in- te...