Motivated by the necessity of reasoning about transformation experiments and their results, we propose a mapping between an ontology representing transformation processes and probabilistic relational models. These extend Bayesian networks with the notion of class and relation of relational data bases and, for this reason, are well suited to represent concepts and ontologies’ properties. To easy the representation, we exemplify a transformation process as a cooking recipe and present our approach for an ontology in the cooking domain that extends the Suggested Upper level Merged Ontology (SUMO)
A number of representation systems have been proposed that extend the purely propositional Bayesian ...
AbstractIn all scientific disciplines there are multiple competing and complementary theories that h...
We present a framework for probabilistic Information Processing on the Semantic Web that is capable ...
International audienceProbabilistic Relational Models (PRMs) extend Bayesian networks (BNs) with the...
International audienceThis paper presents a workflow for the design of transformation processes usin...
Abstract: The increase and diversification of information has created new user requirements. The pro...
Abstract. Building a probabilistic network for a real-life domain of ap-plication is a hard and time...
Abstract. Building a probabilistic network for a real-life domain of application is a hard and time-...
International audienceOntologies and probabilistic graphical models are considered within the most e...
This paper presents our ongoing effort on developing a principled methodology for automatic ontology...
Today, ontologies are the standard for representing knowledge about concepts and relations among con...
AbstractThis paper addresses the issues of knowledge representation and reasoning in large, complex,...
International audienceProbabilistic Graphical Models (PGMs) are powerful tools for representing and ...
In all scientific disciplines there are multiple competing and complementary theories that have been...
In the semantic web environment, where several independent ontologies are used in order to describe...
A number of representation systems have been proposed that extend the purely propositional Bayesian ...
AbstractIn all scientific disciplines there are multiple competing and complementary theories that h...
We present a framework for probabilistic Information Processing on the Semantic Web that is capable ...
International audienceProbabilistic Relational Models (PRMs) extend Bayesian networks (BNs) with the...
International audienceThis paper presents a workflow for the design of transformation processes usin...
Abstract: The increase and diversification of information has created new user requirements. The pro...
Abstract. Building a probabilistic network for a real-life domain of ap-plication is a hard and time...
Abstract. Building a probabilistic network for a real-life domain of application is a hard and time-...
International audienceOntologies and probabilistic graphical models are considered within the most e...
This paper presents our ongoing effort on developing a principled methodology for automatic ontology...
Today, ontologies are the standard for representing knowledge about concepts and relations among con...
AbstractThis paper addresses the issues of knowledge representation and reasoning in large, complex,...
International audienceProbabilistic Graphical Models (PGMs) are powerful tools for representing and ...
In all scientific disciplines there are multiple competing and complementary theories that have been...
In the semantic web environment, where several independent ontologies are used in order to describe...
A number of representation systems have been proposed that extend the purely propositional Bayesian ...
AbstractIn all scientific disciplines there are multiple competing and complementary theories that h...
We present a framework for probabilistic Information Processing on the Semantic Web that is capable ...