which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited. The gradient learning model has been raising great attention in view of its promising perspectives for applications in statistics, data dimensionality reducing, and other specific fields. In this paper, we raise a new gradient learning model for ontology similarity measuring and ontology mapping in multidividing setting. The sample error in this setting is given by virtue of the hypothesis space and the trick of ontology dividing operator. Finally, two experiments presented on plant and humanoid robotics field verify the efficiency of the new computation model for ontology similarity measure and ontology mapping applic...
Computational models of semantic similarity can be found in many applications, with the aim to give ...
Ontology Matching aims at finding correspondences between two different ontologies with overlapping ...
The heterogeneity problem among different sensor ontologies hinders the interaction of information. ...
Ontology is widely used in information retrieval, image processing and other various disciplines. Th...
As a conceptual semantic tool, ontology is widely used in many disciplines such as genetics, nutriti...
With the extensive application of ontology in the fields of information retrieval and artificial int...
Ontologies are increasingly being used to provide background knowledge in machine learning models. W...
Similarity measurement is important for numerous applications. Be it classical information retrieval...
Semantic similarity searches in ontologies are an important component of many bioinformatic algorith...
Ontology is the kernel technique of Semantic Web (SW), which enables the interaction and cooperation...
Abstract. This paper presents an aggregation approach of similarity measures for ontology matching c...
Lexical similarity based ontology mappings are useful to obtain semantic translations of database sc...
Modern infrastructures for information and communication technologies are aimed at providing enhance...
Abstract: In this paper, we present a method of an ontology mapping based on a similarity measure an...
Every ontology entity such as a concept or a property has its own structural infor-mation represente...
Computational models of semantic similarity can be found in many applications, with the aim to give ...
Ontology Matching aims at finding correspondences between two different ontologies with overlapping ...
The heterogeneity problem among different sensor ontologies hinders the interaction of information. ...
Ontology is widely used in information retrieval, image processing and other various disciplines. Th...
As a conceptual semantic tool, ontology is widely used in many disciplines such as genetics, nutriti...
With the extensive application of ontology in the fields of information retrieval and artificial int...
Ontologies are increasingly being used to provide background knowledge in machine learning models. W...
Similarity measurement is important for numerous applications. Be it classical information retrieval...
Semantic similarity searches in ontologies are an important component of many bioinformatic algorith...
Ontology is the kernel technique of Semantic Web (SW), which enables the interaction and cooperation...
Abstract. This paper presents an aggregation approach of similarity measures for ontology matching c...
Lexical similarity based ontology mappings are useful to obtain semantic translations of database sc...
Modern infrastructures for information and communication technologies are aimed at providing enhance...
Abstract: In this paper, we present a method of an ontology mapping based on a similarity measure an...
Every ontology entity such as a concept or a property has its own structural infor-mation represente...
Computational models of semantic similarity can be found in many applications, with the aim to give ...
Ontology Matching aims at finding correspondences between two different ontologies with overlapping ...
The heterogeneity problem among different sensor ontologies hinders the interaction of information. ...