International audienceLearning Causal Bayesian Networks (CBNs) is a new line of research in the machine learning eld. Within the existing works in this direction, few of them have taken into account the gain that can be expected when integrating additional knowledge during the learning process. In this paper, we present a new serendipitous strategy for learning CBNs using prior knowledge extracted from ontologies. The integration of such domain's semantic information can be very useful to reveal new causal relations and provide the necessary knowledge to anticipate the optimal choice of experimentations. Our strategy also supports the evolving character of the semantic background by reusing the causal discoveries in order to enrich the doma...
Causal inference is one of the most fundamental reasoning processes and one that is essential for qu...
International audienceThis paper presents the CBNB (Causal Bayesian Networks Building) algorithm for...
Whereas acausal Bayesian networks represent probabilistic independence, causal Bayesian networks rep...
International audienceWith the rising need to reuse the existing knowledge when learning Causal Baye...
With the rising need to reuse the existing domain knowledge when learning causal Bayesian networks, ...
International audienceWith the rising need to reuse the existing knowledge when learning Causal Baye...
International audienceBayesian networks (BN) have been used for prediction or classification tasks i...
En réponse au besoin croissant de réutiliser les connaissances déjà existantes lors de l'apprentissa...
This paper describes a systematic procedure for constructing Bayesian networks (BNs) from domain kno...
The main goal of this paper is to describe a new graphical structure called "Bayesian causal maps" t...
From conventional observation data , it is rarely possible to determine a fully causal Bayesian netw...
Abstract—Bayesian Networks are probabilistic models of data that are useful to answer probabilistic ...
AbstractIn this article, we demonstrate the usefulness of causal Bayesian networks as probabilistic ...
This paper describes a systematic procedure for constructing Bayesian networks from domain knowledge...
In biomedical domains free text electronic literature is an important resource for knowledge discove...
Causal inference is one of the most fundamental reasoning processes and one that is essential for qu...
International audienceThis paper presents the CBNB (Causal Bayesian Networks Building) algorithm for...
Whereas acausal Bayesian networks represent probabilistic independence, causal Bayesian networks rep...
International audienceWith the rising need to reuse the existing knowledge when learning Causal Baye...
With the rising need to reuse the existing domain knowledge when learning causal Bayesian networks, ...
International audienceWith the rising need to reuse the existing knowledge when learning Causal Baye...
International audienceBayesian networks (BN) have been used for prediction or classification tasks i...
En réponse au besoin croissant de réutiliser les connaissances déjà existantes lors de l'apprentissa...
This paper describes a systematic procedure for constructing Bayesian networks (BNs) from domain kno...
The main goal of this paper is to describe a new graphical structure called "Bayesian causal maps" t...
From conventional observation data , it is rarely possible to determine a fully causal Bayesian netw...
Abstract—Bayesian Networks are probabilistic models of data that are useful to answer probabilistic ...
AbstractIn this article, we demonstrate the usefulness of causal Bayesian networks as probabilistic ...
This paper describes a systematic procedure for constructing Bayesian networks from domain knowledge...
In biomedical domains free text electronic literature is an important resource for knowledge discove...
Causal inference is one of the most fundamental reasoning processes and one that is essential for qu...
International audienceThis paper presents the CBNB (Causal Bayesian Networks Building) algorithm for...
Whereas acausal Bayesian networks represent probabilistic independence, causal Bayesian networks rep...