centralized clustering method to increase accuracy in ontology matching systems
Authors
abstract
ontology is the main infrastructure of the semantic web which provides facilities for integration, searching and sharing of information on the web. development of ontologies as the basis of semantic web and their heterogeneities have led to the existence of ontology matching. by emerging large-scale ontologies in real domain, the ontology matching systems faced with some problem like memory consumption. therefore, partitioning the ontology was proposed. in this paper, a new clustering method for the concepts within ontologies is proposed, which is called seecc. the proposed method is a seeding-based clustering method which reduces the complexity of comparison by using clusters’ seed. the seecc method facilitates the memory consuming problem and increases their accuracy in the large-scale matching problem as well. according to the evaluation of seecc's results with falcon-ao and the proposed system by algergawy accuracy of the ontology matching is easily observed. furthermore, compared to oaei (ontology alignment evaluation initiative), seecc has acceptable result with the top ten systems.
similar resources
Centralized Clustering Method To Increase Accuracy In Ontology Matching Systems
Ontology is the main infrastructure of the Semantic Web which provides facilities for integration, searching and sharing of information on the web. Development of ontologies as the basis of semantic web and their heterogeneities have led to the existence of ontology matching. By emerging large-scale ontologies in real domain, the ontology matching systems faced with some problem like memory con...
full textCentralized Clustering Method To Increase Accuracy In Ontology Matching Systems
Ontology is the main infrastructure of the Semantic Web which provides facilities for integration, searching and sharing of information on the web. Development of ontologies as the basis of semantic web and their heterogeneities have led to the existence of ontology matching. By emerging large-scale ontologies in real domain, the ontology matching systems faced with some problem like memory con...
full textA Semantic Matching Method for Clustering Traders in B2B Systems
This Work is part of the ICS (Intelligent Commerce System) project whose aim is to design and implement an effective Intelligent B2B Commerce System. This paper presents a practical application on Semantic Web and Web Services concepts where a matching procedure to associate potential buyers and suppliers in a B2B system is shown and the use of patterns and tools in the development of Semantic ...
full textA New Fuzzy Clustering Based Method to Increase the Accuracy of Software Development Effort Estimation
Project planning plays a significant role in software projects so that imprecise estimations often lead to the project faults or dramatic outcomes for the project team. In recent years, various methods have been proposed to estimate the software development effort accurately. Among all proposed methods the non algorithmic methods by using soft computing techniques have presented considerable re...
full textImproving Accuracy in Intrusion Detection Systems Using Classifier Ensemble and Clustering
Recently by developing the technology, the number of network-based servicesis increasing, and sensitive information of users is shared through the Internet.Accordingly, large-scale malicious attacks on computer networks could causesevere disruption to network services so cybersecurity turns to a major concern fornetworks. An intrusion detection system (IDS) could be cons...
full textA Method for Designing Optimal Systems for the Centralized Structures in DEA
This study designs optimal systems for the centralized structures in data envelopmentanalysis (DEA). It assumes that a collection of decision making units (DMUs) with a masterdecision maker and a certain budget for them is available and introduces an optimal systemfor each DMU by maximizing their total revenue. A nmerical example is used to illustrate theproposed model.
full textMy Resources
Save resource for easier access later
Journal title:
amirkabir international journal of modeling, identification, simulation & controlPublisher: amirkabir university of technology
ISSN 2008-6067
volume 45
issue 2 2015
Hosted on Doprax cloud platform doprax.com
copyright © 2015-2023