OntoYield: A Semantic Approach for Context-Based Ontology Recommendation Based on Structure Preservation

With the introduction of the Web 3.0 standards on the World Wide Web, there is a need to include semantic techniques and ontologies in the Web based Recommendation Systems. In order to build query relevant domains and make information retrieval more efficient, it required recommending ontologies based on the query. Most ontology recommendation systems do not preserve the associations and axioms between them rather ontology matching and clustering algorithms tend to deduce logics dynamically. In this paper, a semantic algorithm for ontology recommendation has been proposed, where query-relevant ontologies are recommended by preserving the relationships between the ontological entities. The semantic similarity is computed using the query and the concepts initially and further between the query and description logics which makes it a context-based ontology recommendation system. A strategic approach called as SemantoSim is proposed to compute the semantic similarity.

[1]  Cristian R. Munteanu,et al.  An Approach for the Automatic Recommendation of Ontologies Using Collaborative Knowledge , 2010, KES.

[2]  Qing Liu,et al.  Adapting a knowledge-based schema matching system for ontology mapping , 2016, ACSW.

[3]  K. Saruladha,et al.  Concept type and relationship type classification based approach for identifying and prioritizing potentially interesting concepts in ontology matching , 2016, 2016 International Conference on Emerging Trends in Engineering, Technology and Science (ICETETS).

[4]  K. R. Venugopal,et al.  Onto Collab: Strategic review oriented collaborative knowledge modeling using ontologies , 2015, International Conference on Advanced Computing.

[5]  Oscar Camacho Nieto,et al.  Instance-based ontology matching for e-learning material using an associative pattern classifier , 2017, Comput. Hum. Behav..

[6]  Zbigniew Huzar,et al.  Semantic Validation of UML Class Diagrams with the Use of Domain Ontologies Expressed in OWL 2 , 2016, KKIO Software Engineering Conference.

[7]  Pedro M. Domingos,et al.  Ontology Matching: A Machine Learning Approach , 2004, Handbook on Ontologies.

[8]  Zhifang Sui,et al.  An Ontology Matching Approach Based on Affinity-Preserving Random Walks , 2015, IJCAI.

[9]  Kenneth Ward Church,et al.  Word Association Norms, Mutual Information, and Lexicography , 1989, ACL.

[10]  Alejandro Pazos,et al.  A Multi-criteria Approach for Automatic Ontology Recommendation Using Collective Knowledge , 2012, Recommender Systems for the Social Web.

[11]  Jeng-Shyang Pan,et al.  A segment-based approach for large-scale ontology matching , 2017, Knowledge and Information Systems.

[12]  Martin J. O'Connor,et al.  NCBO Ontology Recommender 2.0: an enhanced approach for biomedical ontology recommendation , 2016, Journal of Biomedical Semantics.

[13]  Pablo Castells,et al.  Improving Ontology Recommendation and Reuse in WebCORE by Collaborative Assessments , 2007, CKC.

[14]  Thomas R. Gruber,et al.  Toward principles for the design of ontologies used for knowledge sharing? , 1995, Int. J. Hum. Comput. Stud..

[15]  Pablo Castells,et al.  CORE: A Tool for Collaborative Ontology Reuse and Evaluation , 2006, EON@WWW.