Joint distributions over many variables are frequently modeled by decomposing them into products of simpler, lower-dimensional conditional distributions, such as in sparsely connected Bayesian networks. However, automatically learning such models can be very computationally expensive when there are many datapoints and many continuous variables with complex nonlinear relationships, particularly when no good ways of decomposing the joint distribution are known a priori. In such situations, previous research has generally focused on the use of discretization techniques in which each continuous variable has a single discretization that is used throughout the entire network. In this paper, we present and compare a wide variety of tree-based algo...
Nonparametric estimation of the conditional distribution of a response given high-dimensional featur...
A general approach is developed to learn the conditional probability density for a noisy time series...
International audienceIn this work we explore the Perturb and Combine idea, celebrated in supervised...
We study Bayesian networks for continuous variables using nonlinear conditional density estimators. ...
Multivariate density estimation is a fundamental problem in Applied Statistics and Machine Learning....
Abstract This thesis develops models and associated Bayesian inference methods for flexible univaria...
This thesis develops models and associated Bayesian inference methods for flexible univariate and mu...
40 pages, 12 figuresUndirected probabilistic graphical models represent the conditional dependencies...
International audienceWe consider randomization schemes of the Chow-Liu algorithm from weak (bagging...
Recently developed techniques have made it possible to quickly learn ac-curate probability density f...
Hinder F, Vaquet V, Brinkrolf J, Hammer B. Fast Non-Parametric Conditional Density Estimation using ...
We present Incremental Thin Junction Trees, a general framework for approximate inference in stati...
The challenge of having to deal with dependent variables in classification and regression using tech...
Mixtures of polynomials (MoPs) are a non-parametric density estimation technique for hybrid Bayesian...
Several methods have recently been developed for joint structure learn-ing of multiple (related) gra...
Nonparametric estimation of the conditional distribution of a response given high-dimensional featur...
A general approach is developed to learn the conditional probability density for a noisy time series...
International audienceIn this work we explore the Perturb and Combine idea, celebrated in supervised...
We study Bayesian networks for continuous variables using nonlinear conditional density estimators. ...
Multivariate density estimation is a fundamental problem in Applied Statistics and Machine Learning....
Abstract This thesis develops models and associated Bayesian inference methods for flexible univaria...
This thesis develops models and associated Bayesian inference methods for flexible univariate and mu...
40 pages, 12 figuresUndirected probabilistic graphical models represent the conditional dependencies...
International audienceWe consider randomization schemes of the Chow-Liu algorithm from weak (bagging...
Recently developed techniques have made it possible to quickly learn ac-curate probability density f...
Hinder F, Vaquet V, Brinkrolf J, Hammer B. Fast Non-Parametric Conditional Density Estimation using ...
We present Incremental Thin Junction Trees, a general framework for approximate inference in stati...
The challenge of having to deal with dependent variables in classification and regression using tech...
Mixtures of polynomials (MoPs) are a non-parametric density estimation technique for hybrid Bayesian...
Several methods have recently been developed for joint structure learn-ing of multiple (related) gra...
Nonparametric estimation of the conditional distribution of a response given high-dimensional featur...
A general approach is developed to learn the conditional probability density for a noisy time series...
International audienceIn this work we explore the Perturb and Combine idea, celebrated in supervised...