The Web of Data, which is one of the dimensions of the Semantic Web (SW), represents a tremendous source of information, which motivates the increasing attention to the formalization and application of machine learning methods for solving tasks such as concept learning, link prediction, inductive instance retrieval in this context. However, the Web of Data is also characterized by various forms of uncertainty, owing to its inherent incompleteness (missing information, uneven data distributions) and noise, which may affect open and distributed architectures. In this paper, we focus on the inductive instance retrieval task regarded as a classification problem. The proposed solution is a framework for learning Terminological Decision Trees fro...
We present a classification method, founded in the instance-based learning and the disjunctive versi...
In the context of semantic knowledge bases, among the possible problems that may be tackled by means...
Abstract. Most learning algorithms for data-driven induction of pattern classifiers (e.g., the decis...
The Web of Data, which is one of the dimensions of the Semantic Web (SW), represents a tremendous so...
In the context of the Semantic Web, assigning individuals to their respective classes is a fundament...
Concept learning methods for Web ontologies inspired by Inductive Logic Programming and the derived ...
Nowadays, building ontologies is a time consuming task since they are mainly manually built. This ma...
Abstract. Nowadays, building ontologies is a time consuming task since they are mainly manually buil...
The problem of predicting the membership w.r.t. a target concept for individuals of Semantic Web kno...
In the context of Semantic Web, one of the most important issues related to the class-membership pre...
Exploiting the complex structure of relational data enables to build better models by taking into ac...
The popularity of ontologies for representing the semantics behind many real-world domains has creat...
In the context of Semantic Web, one of the most important issues related to the class-membership pre...
In the Semantic Web vision of the World Wide Web, content will not only be accessible to humans but...
In inductive databases, there is no conceptual difference between data and the models describing the...
We present a classification method, founded in the instance-based learning and the disjunctive versi...
In the context of semantic knowledge bases, among the possible problems that may be tackled by means...
Abstract. Most learning algorithms for data-driven induction of pattern classifiers (e.g., the decis...
The Web of Data, which is one of the dimensions of the Semantic Web (SW), represents a tremendous so...
In the context of the Semantic Web, assigning individuals to their respective classes is a fundament...
Concept learning methods for Web ontologies inspired by Inductive Logic Programming and the derived ...
Nowadays, building ontologies is a time consuming task since they are mainly manually built. This ma...
Abstract. Nowadays, building ontologies is a time consuming task since they are mainly manually buil...
The problem of predicting the membership w.r.t. a target concept for individuals of Semantic Web kno...
In the context of Semantic Web, one of the most important issues related to the class-membership pre...
Exploiting the complex structure of relational data enables to build better models by taking into ac...
The popularity of ontologies for representing the semantics behind many real-world domains has creat...
In the context of Semantic Web, one of the most important issues related to the class-membership pre...
In the Semantic Web vision of the World Wide Web, content will not only be accessible to humans but...
In inductive databases, there is no conceptual difference between data and the models describing the...
We present a classification method, founded in the instance-based learning and the disjunctive versi...
In the context of semantic knowledge bases, among the possible problems that may be tackled by means...
Abstract. Most learning algorithms for data-driven induction of pattern classifiers (e.g., the decis...