The integration of both distributed schemas and data repositories is a major challenge in data and knowledge management applications. Instances of this problem range from mapping database schemas to object reconciliation in the linked open data cloud. We present a novel approach to several important data integration problems that combines logical and probabilistic reasoning. We first provide a brief overview of some of the basic formalisms such as description logics and Markov logic that are used in the framework. We then describe the representation of the different integration problems in the probabilistic-logical framework and discuss efficient inference algorithms. For each of the applications, we conducted extensive experiments on stand...
The recently introduced Datalog+/– family of tractable ontology languages is suitable for representi...
This thesis deals with Statistical Relational Learning (SRL), a research area combining principles a...
The data integration problem is to provide uniform access to multiple heterogeneous information sour...
The integration of both distributed schemas and data repositories is a major challenge in data and k...
Probabilistic description logic programs are a powerful tool for knowledge representation in the Sem...
Probabilistic description logic programs are a powerful tool for knowledge representation in the Sem...
We present a framework for probabilistic Information Processing on the Semantic Web that is capable ...
Abstract. We present a novel approach to probabilistic description logic pro-grams for the Semantic ...
Abstract. Creating mappings between ontologies is a common way of approaching the semantic heterogen...
We present a novel approach to probabilistic description logic programs for the Semantic Web in whic...
We present an infrastructure for probabilistic reasoning with ontologies based on our Markov logic e...
We present a novel approach to probabilistic description logic programs for the Semantic Web in whic...
The complexity of probabilistic reasoning prohibits its application on a large scale of data. In ord...
Creating mappings between ontologies is a common way of approaching the semantic heterogeneity probl...
Probabilistic data integration is a specific kind of data integration where integration problems suc...
The recently introduced Datalog+/– family of tractable ontology languages is suitable for representi...
This thesis deals with Statistical Relational Learning (SRL), a research area combining principles a...
The data integration problem is to provide uniform access to multiple heterogeneous information sour...
The integration of both distributed schemas and data repositories is a major challenge in data and k...
Probabilistic description logic programs are a powerful tool for knowledge representation in the Sem...
Probabilistic description logic programs are a powerful tool for knowledge representation in the Sem...
We present a framework for probabilistic Information Processing on the Semantic Web that is capable ...
Abstract. We present a novel approach to probabilistic description logic pro-grams for the Semantic ...
Abstract. Creating mappings between ontologies is a common way of approaching the semantic heterogen...
We present a novel approach to probabilistic description logic programs for the Semantic Web in whic...
We present an infrastructure for probabilistic reasoning with ontologies based on our Markov logic e...
We present a novel approach to probabilistic description logic programs for the Semantic Web in whic...
The complexity of probabilistic reasoning prohibits its application on a large scale of data. In ord...
Creating mappings between ontologies is a common way of approaching the semantic heterogeneity probl...
Probabilistic data integration is a specific kind of data integration where integration problems suc...
The recently introduced Datalog+/– family of tractable ontology languages is suitable for representi...
This thesis deals with Statistical Relational Learning (SRL), a research area combining principles a...
The data integration problem is to provide uniform access to multiple heterogeneous information sour...