Probabilistic Description Logics (ProbDLs) are an extension of Description Logics that are designed to capture uncertainty. We study problems related to these logics. First, we investigate the monodic fragment of Probabilistic first-order logic, show that it has many nice properties, and are able to explain the complexity results obtained for ProbDLs. Second, in order to identify well-behaved, in best-case tractable ProbDLs, we study the complexity landscape for different fragments of ProbEL; amongst others, we are able to identify a tractable fragment. We then study the reasoning problem of ontological query answering, but apply it to probabilistic data. Therefore, we define the framework of ontology-based access to probabilistic data and ...
A central goal of AI is to reason efficiently in domains that are both complex and uncertain. Most a...
Exceptions play an important role in conceptualizing data, especially when new knowledge is introdu...
Abstract. Representing uncertain information is crucial for modeling real world domains. In this pap...
AbstractThe work in this paper is directed towards sophisticated formalisms for reasoning under prob...
We propose a family of probabilistic description logics (DLs) that are derived in a principled way f...
The work in this paper is directed towards sophisticated formalisms for reasoning under probabilisti...
AbstractTowards sophisticated representation and reasoning techniques that allow for probabilistic u...
Creating mappings between ontologies is a common way of approaching the semantic heterogeneity probl...
We introduce the new probabilistic description logic (DL) BEL, which extends the light-weight DL EL ...
Description logics (DLs) are well-known knowledge representation formalisms focused on the represent...
Abstract. Creating mappings between ontologies is a common way of approaching the semantic heterogen...
AbstractThis paper explores some topological features in order to analyse the consistent region in P...
Abstract. One shortcoming of classic Descriptions Logics, DLs, is their inability to encode probabil...
This paper proposes a common framework for various probabilistic logics. It consists of a set of unc...
Abstract Keynote PresentationRules represent knowledge about the world that can be used for reasonin...
A central goal of AI is to reason efficiently in domains that are both complex and uncertain. Most a...
Exceptions play an important role in conceptualizing data, especially when new knowledge is introdu...
Abstract. Representing uncertain information is crucial for modeling real world domains. In this pap...
AbstractThe work in this paper is directed towards sophisticated formalisms for reasoning under prob...
We propose a family of probabilistic description logics (DLs) that are derived in a principled way f...
The work in this paper is directed towards sophisticated formalisms for reasoning under probabilisti...
AbstractTowards sophisticated representation and reasoning techniques that allow for probabilistic u...
Creating mappings between ontologies is a common way of approaching the semantic heterogeneity probl...
We introduce the new probabilistic description logic (DL) BEL, which extends the light-weight DL EL ...
Description logics (DLs) are well-known knowledge representation formalisms focused on the represent...
Abstract. Creating mappings between ontologies is a common way of approaching the semantic heterogen...
AbstractThis paper explores some topological features in order to analyse the consistent region in P...
Abstract. One shortcoming of classic Descriptions Logics, DLs, is their inability to encode probabil...
This paper proposes a common framework for various probabilistic logics. It consists of a set of unc...
Abstract Keynote PresentationRules represent knowledge about the world that can be used for reasonin...
A central goal of AI is to reason efficiently in domains that are both complex and uncertain. Most a...
Exceptions play an important role in conceptualizing data, especially when new knowledge is introdu...
Abstract. Representing uncertain information is crucial for modeling real world domains. In this pap...