Open Access Open Access  Restricted Access Subscription Access

Ontology Alignment Using Machine Learning Techniques


Affiliations
1 Computer Engineering Department, Shahid Chamran University, Ahvaz, Iran, Islamic Republic of
 

In the semantic web, ontology plays an important role to provide formal definitions of concepts and relationships. Therefore, communicating similar ontologies becomes essential to provide ontologies interpretability and extendibility. Thus, it is inevitable to have similar but not the same ontologies in a particular domain since there might be several definitions for a given concept. This paper presents a method to combine similarity measures of different categories without having ontology instances or any user feedback in regard with alignment of two given ontologies. To align different ontologies efficiently, K Nearest Neighbor (KNN), Support Vector Machine (SVM), Decision Tree (DT) and AdaBoost classifiers are investigated. Each classifier is optimized based on the lower cost and better classification rate. Experimental results demonstrate that the F-measure criterion improves up to 99% using feature selection and combination of AdaBoost and DT classifiers, which is highly comparable, and outperforms the previous reported F-measures.

Keywords

Ontology Alignment, Support Vector Machine, Decision Tree, AdaBoost, K-Nearest Neighbour.
User
Notifications
Font Size

Abstract Views: 358

PDF Views: 182




  • Ontology Alignment Using Machine Learning Techniques

Abstract Views: 358  |  PDF Views: 182

Authors

Azadeh Haratian Nezhadi
Computer Engineering Department, Shahid Chamran University, Ahvaz, Iran, Islamic Republic of
Bita Shadgar
Computer Engineering Department, Shahid Chamran University, Ahvaz, Iran, Islamic Republic of
Alireza Osareh
Computer Engineering Department, Shahid Chamran University, Ahvaz, Iran, Islamic Republic of

Abstract


In the semantic web, ontology plays an important role to provide formal definitions of concepts and relationships. Therefore, communicating similar ontologies becomes essential to provide ontologies interpretability and extendibility. Thus, it is inevitable to have similar but not the same ontologies in a particular domain since there might be several definitions for a given concept. This paper presents a method to combine similarity measures of different categories without having ontology instances or any user feedback in regard with alignment of two given ontologies. To align different ontologies efficiently, K Nearest Neighbor (KNN), Support Vector Machine (SVM), Decision Tree (DT) and AdaBoost classifiers are investigated. Each classifier is optimized based on the lower cost and better classification rate. Experimental results demonstrate that the F-measure criterion improves up to 99% using feature selection and combination of AdaBoost and DT classifiers, which is highly comparable, and outperforms the previous reported F-measures.

Keywords


Ontology Alignment, Support Vector Machine, Decision Tree, AdaBoost, K-Nearest Neighbour.