Most of the approaches for dealing with uncertainty in the Semantic Web rely on the principle that this uncertainty is already asserted. In this paper, we propose a new approach to learn and reason about uncertainty in the Semantic Web. Using instance data, we learn the uncertainty of an OWL ontology, and use that information to perform probabilistic reasoning on it. For this purpose, we use Markov logic, a new representation formalism that combines logic with probabilistic graphical models
We present the web application TRILL on SWISH, which allows the user to write probabilistic Descript...
AbstractTowards uncertainty reasoning in the Rules, Logic, and Proof layers of the Semantic Web, we ...
We present a framework for probabilistic Information Processing on the Semantic Web that is capable ...
Abstract. The main idea behind the Semantic Web is the representation of knowledge in an explicit an...
We present an infrastructure for probabilistic reasoning with ontologies based on our Markov logic e...
Abstract. OWL ontologies have gained great popularity as a context modelling tool for intelligent en...
AbstractThe work in this paper is directed towards sophisticated formalisms for reasoning under prob...
The work in this paper is directed towards sophisticated formalisms for reasoning under probabilisti...
The management of uncertainty in the Semantic Web is of foremost importance given the nature and ori...
One of the major weaknesses of current research on the Semantic Web (SW) is the lack of proper means...
Abstract. We propose a framework for querying probabilistic instance data in the presence of an OWL2...
In previous work, we have introduced probabilistic description logic programs for the Semantic Web, ...
The Semantic Web effort has steadily been gaining traction in the recent years. In particular,Web se...
The Semantic Web effort has steadily been gaining traction in the recent years. In particular,Web se...
Towards uncertainty reasoning in the Rules, Logic, and Proof layers of the Semantic Web, we present ...
We present the web application TRILL on SWISH, which allows the user to write probabilistic Descript...
AbstractTowards uncertainty reasoning in the Rules, Logic, and Proof layers of the Semantic Web, we ...
We present a framework for probabilistic Information Processing on the Semantic Web that is capable ...
Abstract. The main idea behind the Semantic Web is the representation of knowledge in an explicit an...
We present an infrastructure for probabilistic reasoning with ontologies based on our Markov logic e...
Abstract. OWL ontologies have gained great popularity as a context modelling tool for intelligent en...
AbstractThe work in this paper is directed towards sophisticated formalisms for reasoning under prob...
The work in this paper is directed towards sophisticated formalisms for reasoning under probabilisti...
The management of uncertainty in the Semantic Web is of foremost importance given the nature and ori...
One of the major weaknesses of current research on the Semantic Web (SW) is the lack of proper means...
Abstract. We propose a framework for querying probabilistic instance data in the presence of an OWL2...
In previous work, we have introduced probabilistic description logic programs for the Semantic Web, ...
The Semantic Web effort has steadily been gaining traction in the recent years. In particular,Web se...
The Semantic Web effort has steadily been gaining traction in the recent years. In particular,Web se...
Towards uncertainty reasoning in the Rules, Logic, and Proof layers of the Semantic Web, we present ...
We present the web application TRILL on SWISH, which allows the user to write probabilistic Descript...
AbstractTowards uncertainty reasoning in the Rules, Logic, and Proof layers of the Semantic Web, we ...
We present a framework for probabilistic Information Processing on the Semantic Web that is capable ...