International audienceWe consider structure discovery of undirected graphical models from observational data. Inferring likely structures from few examples is a complex task often requiring the formulation of priors and sophisticated inference procedures. Popular methods rely on estimating a penalized maximum likelihood of the precision matrix. However, in these approaches structure recovery is an indirect consequence of the data-fit term, the penalty can be difficult to adapt for domain-specific knowledge, and the inference is computationally demanding. By contrast, it may be easier to generate training samples of data that arise from graphs with the desired structure properties. We propose here to leverage this latter source of informati...
The goal of the thesis is to propose methods for learning sparse and structured models from data tha...
International audienceGaussian graphical models (GGM) are often used to describe the conditional cor...
We consider the problem of estimating a sparse dynamic Gaussian graphical model with L1 penalized ma...
International audienceWe consider structure discovery of undirected graphical models from observatio...
International audienceWe consider structure discovery of undirected graphical models from observatio...
International audienceWe consider structure discovery of undirected graphical models from observatio...
International audienceWe consider structure discovery of undirected graphical models from observatio...
International audienceWe consider structure discovery of undirected graphical models from observatio...
International audienceWe consider structure discovery of undirected graphical models from observatio...
International audienceWe consider structure discovery of undirected graphical models from observatio...
Belilovsky E., Kastner K., Varoquaux G., Blaschko M., ''Learning to discover sparse graphical models...
© 2017 International Machine Learning Society (IMLS). All rights reserved. We consider structure dis...
Cette thèse présente de nouvelles méthodes d’apprentissage structuré et parcimonieux sur les graphes...
Cette thèse présente de nouvelles méthodes d’apprentissage structuré et parcimonieux sur les graphes...
The main topic of the doctoral thesis revolves around learning the structure of a graphical model fr...
The goal of the thesis is to propose methods for learning sparse and structured models from data tha...
International audienceGaussian graphical models (GGM) are often used to describe the conditional cor...
We consider the problem of estimating a sparse dynamic Gaussian graphical model with L1 penalized ma...
International audienceWe consider structure discovery of undirected graphical models from observatio...
International audienceWe consider structure discovery of undirected graphical models from observatio...
International audienceWe consider structure discovery of undirected graphical models from observatio...
International audienceWe consider structure discovery of undirected graphical models from observatio...
International audienceWe consider structure discovery of undirected graphical models from observatio...
International audienceWe consider structure discovery of undirected graphical models from observatio...
International audienceWe consider structure discovery of undirected graphical models from observatio...
Belilovsky E., Kastner K., Varoquaux G., Blaschko M., ''Learning to discover sparse graphical models...
© 2017 International Machine Learning Society (IMLS). All rights reserved. We consider structure dis...
Cette thèse présente de nouvelles méthodes d’apprentissage structuré et parcimonieux sur les graphes...
Cette thèse présente de nouvelles méthodes d’apprentissage structuré et parcimonieux sur les graphes...
The main topic of the doctoral thesis revolves around learning the structure of a graphical model fr...
The goal of the thesis is to propose methods for learning sparse and structured models from data tha...
International audienceGaussian graphical models (GGM) are often used to describe the conditional cor...
We consider the problem of estimating a sparse dynamic Gaussian graphical model with L1 penalized ma...