Mutual independence is a key concept in statistics that characterizes the structural relationships between variables. Existing methods to investigate mutual independence rely on the definition of two competing models, one being nested into the other and used to generate a null distribution for a statistic of interest, usually under the asymptotic assumption of large sample size. As such, these methods have a very restricted scope of application. In the present manuscript, we propose to change the investigation of mutual independence from a hypothesis-driven task that can only be applied in very specific cases to a blind and automated search within patterns of mutual independence. To this end, we treat the issue as one of model comparison th...
We consider the problem of learning conditional independencies, ex-pressed as a Markov network, from...
Dependence measures and tests for independence have recently attracted a lot of attention, because t...
International audienceThe independence clustering problem is considered in the following formulation...
International audienceMutual independence is a key concept in statistics that characterizes the stru...
For a random variable $X$, we are interested in the blind extraction of its finest mutual independen...
We propose a general method for distributed Bayesian model choice, using the marginal likelihood, wh...
International audienceDeveloped for applications in itemset mining, the notion of Mutual Constrained...
In this article we propose novel Bayesian nonparametric methods using Dirichlet Process Mixture (DPM...
We consider the problem of estimating the marginal independence structure of a Bayesian network from...
Cet article est une version condensée d'une précédente publication présentée dans une conférence sur...
We propose a test of independence of two multivariate random vectors, given a sample from the underl...
This article introduces a Bayesian nonparametric method for quantifying the relative evidence in a d...
The use of mutual information as a similarity measure in agglomerative hierarchical cluster-ing (AHC...
My PhD research focuses on measuring and testing mutual dependence and conditional mean dependence, ...
<div><p>The use of mutual information as a similarity measure in agglomerative hierarchical clusteri...
We consider the problem of learning conditional independencies, ex-pressed as a Markov network, from...
Dependence measures and tests for independence have recently attracted a lot of attention, because t...
International audienceThe independence clustering problem is considered in the following formulation...
International audienceMutual independence is a key concept in statistics that characterizes the stru...
For a random variable $X$, we are interested in the blind extraction of its finest mutual independen...
We propose a general method for distributed Bayesian model choice, using the marginal likelihood, wh...
International audienceDeveloped for applications in itemset mining, the notion of Mutual Constrained...
In this article we propose novel Bayesian nonparametric methods using Dirichlet Process Mixture (DPM...
We consider the problem of estimating the marginal independence structure of a Bayesian network from...
Cet article est une version condensée d'une précédente publication présentée dans une conférence sur...
We propose a test of independence of two multivariate random vectors, given a sample from the underl...
This article introduces a Bayesian nonparametric method for quantifying the relative evidence in a d...
The use of mutual information as a similarity measure in agglomerative hierarchical cluster-ing (AHC...
My PhD research focuses on measuring and testing mutual dependence and conditional mean dependence, ...
<div><p>The use of mutual information as a similarity measure in agglomerative hierarchical clusteri...
We consider the problem of learning conditional independencies, ex-pressed as a Markov network, from...
Dependence measures and tests for independence have recently attracted a lot of attention, because t...
International audienceThe independence clustering problem is considered in the following formulation...