Abstract. Representing uncertain information is crucial for modeling real world domains. In this paper we present a technique for the integration of probabilistic information in Description Logics (DLs) that is based on the distribution semantics for probabilistic logic programs. In the resulting approach, that we called DISPONTE, the axioms of a probabilistic knowledge base (KB) can be annotated with a real number between 0 and 1. A probabilistic knowledge base then defines a probability distribution over regular KBs called worlds and the probability of a given query can be obtained from the joint distribution of the worlds and the query by marginalization. We present the algorithm BUNDLE for computing the probability of queries from DISPO...
The management of uncertainty in the Semantic Web is of foremost importance given the nature and ori...
Recently, the problem of representing uncertainty in Description Logics (DLs) has received an increa...
Towards sophisticated representation and reasoning techniques that allow for probabilistic uncertain...
Representing uncertain information is crucial for modeling real world domains. In this paper we pres...
Representing uncertain information is crucial for modeling real world domains. In this paper we pres...
We present a semantics for Probabilistic Description Logics that is based on the distribution semant...
Modeling real world domains requires ever more frequently to represent uncertain information. The ...
Representing uncertain information is crucial for modeling real world domains. This has been fully r...
We present DISPONTE, a semantics for probabilistic ontolo- gies that is based on the distribution s...
Uncertain information is ubiquitous in real world domains and in the Semantic Web. Recently, the pro...
Abstract. Uncertain information is ubiquitous in the Semantic Web, due to methods used for collectin...
Uncertain information is ubiquitous in the Semantic Web, due to methods used for collecting data and...
We consider the problem of learning both the structure and the parameters of Probabilistic Descripti...
We propose a general scheme for adding probabilistic reasoning capabilities to a wide variety of kno...
Description logics in their standard setting only allow for representing and reasoning with crisp kn...
The management of uncertainty in the Semantic Web is of foremost importance given the nature and ori...
Recently, the problem of representing uncertainty in Description Logics (DLs) has received an increa...
Towards sophisticated representation and reasoning techniques that allow for probabilistic uncertain...
Representing uncertain information is crucial for modeling real world domains. In this paper we pres...
Representing uncertain information is crucial for modeling real world domains. In this paper we pres...
We present a semantics for Probabilistic Description Logics that is based on the distribution semant...
Modeling real world domains requires ever more frequently to represent uncertain information. The ...
Representing uncertain information is crucial for modeling real world domains. This has been fully r...
We present DISPONTE, a semantics for probabilistic ontolo- gies that is based on the distribution s...
Uncertain information is ubiquitous in real world domains and in the Semantic Web. Recently, the pro...
Abstract. Uncertain information is ubiquitous in the Semantic Web, due to methods used for collectin...
Uncertain information is ubiquitous in the Semantic Web, due to methods used for collecting data and...
We consider the problem of learning both the structure and the parameters of Probabilistic Descripti...
We propose a general scheme for adding probabilistic reasoning capabilities to a wide variety of kno...
Description logics in their standard setting only allow for representing and reasoning with crisp kn...
The management of uncertainty in the Semantic Web is of foremost importance given the nature and ori...
Recently, the problem of representing uncertainty in Description Logics (DLs) has received an increa...
Towards sophisticated representation and reasoning techniques that allow for probabilistic uncertain...