In this paper, we propose an approach for structural learning of independence graphs from multiple databases or prior knowledge of conditional independencies. In our approach, we first learn a local graph from each database separately, and then we combine these local graphs together to construct a global graph over all variables. This approach can also be used in structural learning to utilize the prior knowledge of conditional independencies.Computer Science, Artificial IntelligenceEICPCI-S(ISTP)
this paper, our interest is focused in studying the methods based on independence criteria. The main...
AbstractGraphs provide an excellent framework for interrogating symmetric models of measurement rand...
In this paper we study conditional independence structures arising from conditional probabilities an...
Chain graphs present a broad class of graphical models for description of conditional independence s...
In this paper, we propose that structural learning of a directed acyclic graph can be decomposed int...
This work is centred on investigating dependencies and representing learned structures as graphs. W...
AbstractIn this paper, we propose that structural learning of a directed acyclic graph can be decomp...
Belief networks are graphical structures able to represent dependence and independence relationships...
AbstractWhen it comes to learning graphical models from data, approaches based on conditional indepe...
We consider graphs that represent pairwise marginal independencies amongst a set of variables (for i...
AbstractIn the paper we describe a new independence-based approach for learning Belief Networks. The...
AbstractThe theory of Gaussian graphical models is a powerful tool for independence analysis between...
Probabilistic Conditional Independence Structures provides the mathematical description of probabili...
There are different models, which describe conditional independence induced by multivariate distribu...
One of the common obstacles for learning causal models from data is that high-order conditional inde...
this paper, our interest is focused in studying the methods based on independence criteria. The main...
AbstractGraphs provide an excellent framework for interrogating symmetric models of measurement rand...
In this paper we study conditional independence structures arising from conditional probabilities an...
Chain graphs present a broad class of graphical models for description of conditional independence s...
In this paper, we propose that structural learning of a directed acyclic graph can be decomposed int...
This work is centred on investigating dependencies and representing learned structures as graphs. W...
AbstractIn this paper, we propose that structural learning of a directed acyclic graph can be decomp...
Belief networks are graphical structures able to represent dependence and independence relationships...
AbstractWhen it comes to learning graphical models from data, approaches based on conditional indepe...
We consider graphs that represent pairwise marginal independencies amongst a set of variables (for i...
AbstractIn the paper we describe a new independence-based approach for learning Belief Networks. The...
AbstractThe theory of Gaussian graphical models is a powerful tool for independence analysis between...
Probabilistic Conditional Independence Structures provides the mathematical description of probabili...
There are different models, which describe conditional independence induced by multivariate distribu...
One of the common obstacles for learning causal models from data is that high-order conditional inde...
this paper, our interest is focused in studying the methods based on independence criteria. The main...
AbstractGraphs provide an excellent framework for interrogating symmetric models of measurement rand...
In this paper we study conditional independence structures arising from conditional probabilities an...