Description logics (DLs) are well-known knowledge representation formalisms focused on the representation of terminological knowledge. Due to their first-order semantics, these languages (in their classical form) are not suitable for representing and handling uncertainty. A proba- bilistic extension of a light-weight DL was recently proposed for dealing with certain knowledge occurring in uncertain contexts. In this paper, we continue that line of research by introducing the Bayesian extension BALC of the propositionally closed DL ALC. We present a tableau-based procedure for deciding consistency and adapt it to solve other probabilistic, contextual, and gen- eral inferences in this logic. We also show that all these problems remain ExpTime...
Representing uncertain information is crucial for modeling real world domains. In this paper we pres...
AbstractThe work in this paper is directed towards sophisticated formalisms for reasoning under prob...
Representing uncertain information is crucial for modeling real world domains. In this paper we pres...
Description logics (DLs) are well-known knowledge representation formalisms focused on the represent...
Description logics (DLs) are well-known knowledge representation formalisms focused on the represent...
Description Logics (DLs) that support uncertainty are not as well studied as their crisp alternative...
Description Logics (DLs) that support uncertainty are not as well studied as their crisp alternative...
We propose a family of probabilistic description logics (DLs) that are derived in a principled way f...
We introduce the new probabilistic description logic (DL) BEL, which extends the light-weight DL EL ...
The DL-Lite family of tractable description logics lies between the semantic web languages RDFS and ...
Representing uncertain information is crucial for modeling real world domains. This has been fully r...
Abstract. We present Bayesian Description Logics (BDLs): an exten-sion of Description Logics (DLs) w...
Abstract. Representing uncertain information is crucial for modeling real world domains. In this pap...
The work in this paper is directed towards sophisticated formalisms for reasoning under probabilisti...
It is well known that many artificial intelligence applications need to represent and reason with kn...
Representing uncertain information is crucial for modeling real world domains. In this paper we pres...
AbstractThe work in this paper is directed towards sophisticated formalisms for reasoning under prob...
Representing uncertain information is crucial for modeling real world domains. In this paper we pres...
Description logics (DLs) are well-known knowledge representation formalisms focused on the represent...
Description logics (DLs) are well-known knowledge representation formalisms focused on the represent...
Description Logics (DLs) that support uncertainty are not as well studied as their crisp alternative...
Description Logics (DLs) that support uncertainty are not as well studied as their crisp alternative...
We propose a family of probabilistic description logics (DLs) that are derived in a principled way f...
We introduce the new probabilistic description logic (DL) BEL, which extends the light-weight DL EL ...
The DL-Lite family of tractable description logics lies between the semantic web languages RDFS and ...
Representing uncertain information is crucial for modeling real world domains. This has been fully r...
Abstract. We present Bayesian Description Logics (BDLs): an exten-sion of Description Logics (DLs) w...
Abstract. Representing uncertain information is crucial for modeling real world domains. In this pap...
The work in this paper is directed towards sophisticated formalisms for reasoning under probabilisti...
It is well known that many artificial intelligence applications need to represent and reason with kn...
Representing uncertain information is crucial for modeling real world domains. In this paper we pres...
AbstractThe work in this paper is directed towards sophisticated formalisms for reasoning under prob...
Representing uncertain information is crucial for modeling real world domains. In this paper we pres...