Learning generative probabilistic models is a core problem in machine learning, which presents significant challenges due to the curse of dimensionality. This paper proposes a joint dimensionality reduction and non-parametric density estimation framework, using a novel estimator that can explicitly capture the underlying distribution of appropriate reduced-dimension representations of the input data. The idea is to jointly design a nonlinear dimensionality reducing auto-encoder to model the training data in terms of a parsimonious set of latent random variables, and learn a canonical low-rank tensor model of the joint distribution of the latent variables in the Fourier domain. The proposed latent density model is non-parametric and universa...
Tensors and multiway analysis aim to explore the relationships between the variables used to repres...
This thesis proposes nonparametric techniques to enhance unsupervised learning methods in computatio...
We develop a simple and elegant method for lossless compression using latent variable models, which ...
Effective non-parametric density estimation is a key challenge in high-dimensional multivariate data...
The rising computational and memory demands of machine learning models, particularly in resource-con...
<p>The problem of learning a latent model for sparse or low-dimensional representation of high-dimen...
Machine learning studies algorithms for learning from data. Probabilistic modeling and reasoning...
The main goal of this thesis is to develop efficient non-parametric density estimation methods that ...
Unsupervised learning aims at the discovery of hidden structure that drives the observations in the ...
Most real-world problems that machine learning algorithms are expected to solve face the situation w...
As one principal approach to machine learning and cognitive science, the probabilistic framework has...
The main goal of this thesis is to develop efficient non-parametric density estimation methods that ...
Data uncertainties, such as sensor noise or occlusions, can introduce irreducible ambiguities in ima...
International audienceUnsupervised learning of generative models has seen tremendous progress over r...
Deep generative models have de facto emerged as state of the art when it comes to density estimation...
Tensors and multiway analysis aim to explore the relationships between the variables used to repres...
This thesis proposes nonparametric techniques to enhance unsupervised learning methods in computatio...
We develop a simple and elegant method for lossless compression using latent variable models, which ...
Effective non-parametric density estimation is a key challenge in high-dimensional multivariate data...
The rising computational and memory demands of machine learning models, particularly in resource-con...
<p>The problem of learning a latent model for sparse or low-dimensional representation of high-dimen...
Machine learning studies algorithms for learning from data. Probabilistic modeling and reasoning...
The main goal of this thesis is to develop efficient non-parametric density estimation methods that ...
Unsupervised learning aims at the discovery of hidden structure that drives the observations in the ...
Most real-world problems that machine learning algorithms are expected to solve face the situation w...
As one principal approach to machine learning and cognitive science, the probabilistic framework has...
The main goal of this thesis is to develop efficient non-parametric density estimation methods that ...
Data uncertainties, such as sensor noise or occlusions, can introduce irreducible ambiguities in ima...
International audienceUnsupervised learning of generative models has seen tremendous progress over r...
Deep generative models have de facto emerged as state of the art when it comes to density estimation...
Tensors and multiway analysis aim to explore the relationships between the variables used to repres...
This thesis proposes nonparametric techniques to enhance unsupervised learning methods in computatio...
We develop a simple and elegant method for lossless compression using latent variable models, which ...