In this work, we focus on the design and estimation - from partial observations - of graphical models of real-valued random variables. These models should be suited for a non-standard regression problem where the identity of the observed variables (and therefore of the variables to predict) changes from an instance to the other. The nature of the problem and of the available data lead us to model the network as a Markov random field, a choice consistent with Jaynes' maximum entropy principle. For the prediction task, we turn to the Belief Propagation algorithm - in its classical or Gaussian flavor - which simplicity and efficiency make it usable on large scale networks. After providing a new result on the local stability of the algorithm's ...
This thesis considers the problem of performing inference on undirected graphical models with contin...
Graphical models, such as Bayesian networks and Markov random fields represent statistical dependenc...
Message-passing algorithms consist of a parallelised computing scheme to estimate the marginals of a...
In this work, we focus on the design and estimation - from partial observations - of graphical model...
On s'intéresse à la construction et l'estimation - à partir d'observations incomplètes - de modèles ...
The framework of graphical models is a cornerstone of applied Statistics, allowing for an intuitive ...
The framework of graphical models is a cornerstone of applied Statistics, allowing for an intuitive ...
We propose a probabilistic graphical model realizing a minimal encoding of real variables dependenci...
Probabilistic graphical models provide a natural framework for the representation of complex systems...
International audienceLarge scale inference problems of practical interest can often be addressed wi...
International audienceIn the context of inference with expectation constraints, we propose an approa...
Factor graphs provide a convenient framework for automatically generating (approximate) Bayesian inf...
Probabilistic graphical models encode hidden dependencies between random variables for data modellin...
The research reported in this thesis focuses on approximation techniques for inference in graphical ...
We propose two novel approaches for recommender systems and networks. In the first part, we first gi...
This thesis considers the problem of performing inference on undirected graphical models with contin...
Graphical models, such as Bayesian networks and Markov random fields represent statistical dependenc...
Message-passing algorithms consist of a parallelised computing scheme to estimate the marginals of a...
In this work, we focus on the design and estimation - from partial observations - of graphical model...
On s'intéresse à la construction et l'estimation - à partir d'observations incomplètes - de modèles ...
The framework of graphical models is a cornerstone of applied Statistics, allowing for an intuitive ...
The framework of graphical models is a cornerstone of applied Statistics, allowing for an intuitive ...
We propose a probabilistic graphical model realizing a minimal encoding of real variables dependenci...
Probabilistic graphical models provide a natural framework for the representation of complex systems...
International audienceLarge scale inference problems of practical interest can often be addressed wi...
International audienceIn the context of inference with expectation constraints, we propose an approa...
Factor graphs provide a convenient framework for automatically generating (approximate) Bayesian inf...
Probabilistic graphical models encode hidden dependencies between random variables for data modellin...
The research reported in this thesis focuses on approximation techniques for inference in graphical ...
We propose two novel approaches for recommender systems and networks. In the first part, we first gi...
This thesis considers the problem of performing inference on undirected graphical models with contin...
Graphical models, such as Bayesian networks and Markov random fields represent statistical dependenc...
Message-passing algorithms consist of a parallelised computing scheme to estimate the marginals of a...