Depending on the amount of data to process, file generation may take longer.

If it takes too long to generate, you can limit the data by, for example, reducing the range of years.

Chapter

Download BibTeX

Title

Multi-Relational Learning for Recommendation of Matches between Semantic Structures

Authors

[ 1 ] Instytut Automatyki i Inżynierii Informatycznej, Wydział Elektryczny, Politechnika Poznańska | [ P ] employee

Year of publication

2013

Chapter type

paper

Publication language

english

Keywords
EN
  • statistical relational learning
  • tensor-based data modeling
  • ontology matches recommendation
  • RDF-based reasoning
Abstract

EN The paper presents the Tensor-based Reflective Relational Learning System (TRRLS) as a tensor-based approach to automatic recommendation of matches between nodes of semantic structures. The system may be seen as realizing a probabilistic inference with regard to the relation representing the ‘semantic equivalence’ of ontology classes. Despite the fact that TRRLS is based on the new idea of algebraic modeling of multi-relational data, it provides results that are comparable to those achieved by the leading solutions of the Ontology Alignment Evaluation Initiative (OAEI) contest realizing the task of matching concepts of Anatomy track ontologies on the basis of partially known expert matches.

Pages (from - to)

98 - 107

DOI

10.1007/978-3-642-37343-5_11

URL

https://link.springer.com/chapter/10.1007/978-3-642-37343-5_11

Book

Knowledge Engineering, Machine Learning and Lattice Computing with Applications : 16th International Conference, KES 2012, San Sebastian, Spain, September 10-12, 2012

Presented on

Knowledge Engineering, Machine Learning and Lattice Computing with Applications : 16th International Conference, KES 2012, 10-12.09.2012, San Sebastian, Spain

This website uses cookies to remember the authenticated session of the user. For more information, read about Cookies and Privacy Policy.