Knowledge available through Semantic Web standards can easily be missing, generally because of the adoption of the Open World Assumption (i.e. the truth value of an assertion is not necessarily known). However, the rich relational structure that characterizes ontologies can be exploited for handling such missing knowledge in an explicit way. We present a Statistical Relational Learning system designed for learning terminological naïve Bayesian classifiers, which estimate the probability that a generic individual belongs to the target concept given its membership to a set of Description Logic concepts. During the learning process, we consistently handle the lack of knowledge that may be introduced by the adoption of the Open World Assumption...
In this paper, we propose a method for learning ontologies used to model a domain in the field of in...
We examine a graphical representation of uncertain knowledge called a Bayesian network. The represen...
Description logics (DLs) are well-known knowledge representation formalisms focused on the represent...
Real-world knowledge often involves various degrees of uncertainty. For such a reason, in the Semant...
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,...
Capturing word meaning is one of the challenges of natural language processing (NLP). Formal models ...
In the Semantic Web vision of the World Wide Web, content will not only be accessible to humans but...
We describe an automatic algorithm able to learn university courses ontologies from experimental dat...
This thesis deals with Statistical Relational Learning (SRL), a research area combining principles a...
Relationships between concepts account for a large proportion of semantic knowledge. We present a no...
This work concerns non-parametric approaches for statistical learning applied to the standard knowle...
International audienceProbabilistic Relational Models (PRMs) extend Bayesian networks (BNs) with the...
This paper presents our ongoing effort on developing a principled methodology for automatic ontology...
textSeveral real world tasks involve data that is uncertain and relational in nature. Traditional ap...
In this paper, we propose a method for learning ontologies used to model a domain in the field of in...
We examine a graphical representation of uncertain knowledge called a Bayesian network. The represen...
Description logics (DLs) are well-known knowledge representation formalisms focused on the represent...
Real-world knowledge often involves various degrees of uncertainty. For such a reason, in the Semant...
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,...
Capturing word meaning is one of the challenges of natural language processing (NLP). Formal models ...
In the Semantic Web vision of the World Wide Web, content will not only be accessible to humans but...
We describe an automatic algorithm able to learn university courses ontologies from experimental dat...
This thesis deals with Statistical Relational Learning (SRL), a research area combining principles a...
Relationships between concepts account for a large proportion of semantic knowledge. We present a no...
This work concerns non-parametric approaches for statistical learning applied to the standard knowle...
International audienceProbabilistic Relational Models (PRMs) extend Bayesian networks (BNs) with the...
This paper presents our ongoing effort on developing a principled methodology for automatic ontology...
textSeveral real world tasks involve data that is uncertain and relational in nature. Traditional ap...
In this paper, we propose a method for learning ontologies used to model a domain in the field of in...
We examine a graphical representation of uncertain knowledge called a Bayesian network. The represen...
Description logics (DLs) are well-known knowledge representation formalisms focused on the represent...