We present the first truly polynomial algorithm for PAC-learning the structure of bounded-treewidth junction trees – an attractive subclass of probabilistic graphical models that permits both the compact representation of probability distributions and efficient exact inference. For a constant treewidth, our algorithm has polynomial time and sample complexity. If a junction tree with sufficiently strong intraclique dependencies exists, we provide strong theoretical guarantees in terms of KL divergence of the result from the true distribution. We also present a lazy extension of our approach that leads to very significant speed ups in practice, and demonstrate the viability of our method empirically, on several real world datasets. One of our...
International audienceWe consider randomization schemes of the Chow-Liu algorithm from weak (bagging...
AbstractIt has been shown that junction tree algorithms can provide a quick and efficient method for...
Learning causal models with latent variables from observational and experimental data is an importan...
We show that the expected computational complexity of the Junction-Tree Algorithm for maximum a post...
We show that the expected computational complexity of the Junction-Tree Algorithm for maximum a post...
With the increased availability of data for complex domains, it is desirable to learn Bayesian netwo...
We present Incremental Thin Junction Trees, a general framework for approximate inference in stati...
| openaire: EC/H2020/871042/EU//SoBigData-PlusPlusBayesian networks are popular probabilistic models...
We present new polynomial time algorithms for inference problems in Bayesian networks (BNs) when res...
Graphical models provide a convenient representation for a broad class of probability distributions....
UnrestrictedProbabilistic graphical models such as Bayesian networks and junction trees are widely u...
Abstract In this paper we present a junction tree based inference architecture exploiting the struct...
Belief propagation over junction trees is known to be computationally challenging in the general cas...
Cutset networks — OR (decision) trees that have Bayesian networks whose treewidth is bounded by one ...
This work presents novel algorithms for learning Bayesian network structures with bounded treewidth....
International audienceWe consider randomization schemes of the Chow-Liu algorithm from weak (bagging...
AbstractIt has been shown that junction tree algorithms can provide a quick and efficient method for...
Learning causal models with latent variables from observational and experimental data is an importan...
We show that the expected computational complexity of the Junction-Tree Algorithm for maximum a post...
We show that the expected computational complexity of the Junction-Tree Algorithm for maximum a post...
With the increased availability of data for complex domains, it is desirable to learn Bayesian netwo...
We present Incremental Thin Junction Trees, a general framework for approximate inference in stati...
| openaire: EC/H2020/871042/EU//SoBigData-PlusPlusBayesian networks are popular probabilistic models...
We present new polynomial time algorithms for inference problems in Bayesian networks (BNs) when res...
Graphical models provide a convenient representation for a broad class of probability distributions....
UnrestrictedProbabilistic graphical models such as Bayesian networks and junction trees are widely u...
Abstract In this paper we present a junction tree based inference architecture exploiting the struct...
Belief propagation over junction trees is known to be computationally challenging in the general cas...
Cutset networks — OR (decision) trees that have Bayesian networks whose treewidth is bounded by one ...
This work presents novel algorithms for learning Bayesian network structures with bounded treewidth....
International audienceWe consider randomization schemes of the Chow-Liu algorithm from weak (bagging...
AbstractIt has been shown that junction tree algorithms can provide a quick and efficient method for...
Learning causal models with latent variables from observational and experimental data is an importan...