Utilizing Conceptual Indexing to Enhance the Effectiveness of Vector Space Model

Full Text (PDF, 945KB), PP.1-12

Views: 0 Downloads: 0

Author(s)

Aya M. Al-Zoghby 1,* Ahmed Sharaf Eldin Ahmed 2 Taher T. Hamza 3

1. Computer Science Department, Faculty of Computers & Information, Mansoura University, Egypt

2. Information Systems Department, Faculty of Computers & Information, Helwan University, Egypt

3. Computer Science Department, Faculty of Computers & Information Science, Mansoura University, Egypt

* Corresponding author.

DOI: https://doi.org/10.5815/ijitcs.2013.11.01

Received: 14 Feb. 2013 / Revised: 20 Jun. 2013 / Accepted: 23 Aug. 2013 / Published: 8 Oct. 2013

Index Terms

Semantic Web, Semantic Concepts, UWN, Vector Space Model, Arabic Language

Abstract

One of the main purposes of the semantic Web is to improve the retrieval performance of search systems. Unlike keyword based search systems, the semantic search systems aim to discover pages related to the query's concepts rather than merely collecting all pages instantiating its keywords. To that end, the concepts must be defined to be used as a semantic index instead of the traditional lexical one. In fact, The Arabic language is still far from being semantically searchable. Therefore, this paper proposed a model that exploits the Universal Word Net ontology for producing an Arabic Concepts-Space to be used as the index of Semantic Vector Space Model. The Vector Space Model is one of the most common information retrieval models due to its capability of expressing the documents' structure. However, like all keyword-based search systems, its sensitivity to the query's keywords reduces its retrieval effectiveness. The proposed model allows the VSM to represent Arabic documents by their topic, and thus classify them semantically. This, consequently, enhances the retrieval effectiveness of the search system.

Cite This Paper

Aya M. Al-Zoghby, Ahmed Sharaf Eldin Ahmed, Taher T. Hamza, "Utilizing Conceptual Indexing to Enhance the Effectiveness of Vector Space Model", International Journal of Information Technology and Computer Science(IJITCS), vol.5, no.11, pp.1-12, 2013. DOI:10.5815/ijitcs.2013.11.01

Reference

[1]AraTation: An Arabic Semantic Annotation Tool. Layan M. Bin Saleh and Hend S. Al-Khalifa. s.l. : The 11th International Conference on Information Integration and Web-based Applications & Services (iiWAS2009, 2009.

[2]Semantic internet search engine with focus on Arabic language. Naima Tazit, El Houssine Bouyakhf, Souad Sabri, Abdellah Yousfi, Karim Bouzouba. s.l. : The 1st International Sysmposium on Computers and Arabic Language & Exhibition 2007 © KACST & SCS, iscal.org.sa, 2007.

[3]Jorge Cardoso. Semantic Web services: theory, tools, and applications. s.l. : IGI Global, Mar 30, 2007. ISBN-13: 978-1599040455.

[4]Martin Hepp, Pieter De Leenheer, and Aldo de Moor. Ontology management: semantic web, semantic web services, and business applications. New York ; [London] : Springer, 2008. ISBN: 978-0-387-698899-1.

[5]Vipul Kashyap, Christoph Bussler, and Matthew Moran. The Semantic Web: Semantics for Data and Services on the Web (Data-Centric Systems and Applications). s.l. : Springer , 15 Aug 2008. ISBN-13: 978-3540764519.

[6]Next Generation Semantic Web and Its Application. Soumyarashmi Panigrahi and Sitanath Biswas. s.l. : IJCSI International Journal of Computer Science Issues, , March 2011, Vols. 8, Issue 2,.

[7]OVERVIEW OF APPROACHES TO SEMANTIC WEB SEARCH. Meena Unni , K. Baskaran. s.l. : International Journal of Computer Science and Communication, July-December 2011, Vols. 2, No. 2, pp. 345-349.

[8]Exploring the Advances in Semantic Search. Walter Renteria-Agualimpia, Francisco J. López-Pellicer,Pedro R. Muro-Medrano, Javier Nogueras-Iso, and F.Javier Zarazaga-Soria1. s.l. : International Symposium on Distributed Computing and Artificial Intelligence, 2010.

[9]Introduction to Semantic Search Engine. Junaidah Mohamed Kassim and Mahathir Rahmany. Selangor : International Conference on Electrical Engineering and Informatics ICEEI '09, 2009.

[10]Lilac Al-Safadi, Mai Al-Badrani, and Meshael Al-Junidey. s.l. : International Journal of Computer Applications, April 2011, Vol. 19 No. 4.

[11]The Application of Vector Space Model in the Information Retrieval System. Yao-hong Zhao, Xiao-feng Shi. s.l. : Software Engineering and Knowledge Engineering: Theory and Practice, 2012. Vol. Volume 162, pp. pp 43-49.

[12]UWN: A Large Multilingual Lexical Knowledge Base . Gerard de Melo, Gerhard Weikum. s.l. : Annual Meeting of the Association of Computational Linguistics , 2012.

[13]VSCAS: Vector Space Model- Conceptual Arabic Semantic Search System. Aya M. Al-Zoghby, Ahmed Sharaf Eldin Ahmed, Taher T. Hamza. s.l.

[14]Beyond Concepts: Ontology as Reality Representation. Smith, Barry. 2004 : IOS Press, 73--84.

[15]Karin Breitman, Marco Antonio Casanova, and Walt Truszkowski. Semantic Web: Concepts, Technologies and Applications. s.l. : Springer London Ltd, 28 October 2010. ISBN 13: 9781849966214.

[16]A Pipeline Arabic Named Entity Recognition Using a Hybrid Approach. Oudah, M. M. and Shaalan, K. . s.l. : Proceedings of the 24th International Conference on Computational Linguistics (COLING 2012)., 2012.

[17]Arabic model for semantic web 3.0. Omar Isbaitan, Huda Al-Wahidi. s.l. : International Conference on Intelligent Semantic Web-Services and Applications, 2011.

[18]Samhaa R. El-Beltagy. Technology : Semantic Search. s.l. : ARABIC LANGUAGE TECHNOLOGY CENTER (ALTEC) : The Pre-SWOT Analysis, Feb 2010.

[19]Ontology Based Annotation of Text Segments. Samhaa R. El-Beltagy, Maryam Hazman, and Ahmed Rafea. Seoul, Korea : SAC '07 Proceedings of the 2007 ACM symposium on Applied computing , March 11-15, 2007.

[20]Arabic Semantic Web Applications – A Survey. Aya M. Al-Zoghby, Ahmed Sharaf Eldin Ahmed, Taher T. Hamza. s.l. : Journal of Emerging Technologies in Web Intelligence, Feb 2013. Vols. Vol 5, No 1, pp. 52-69. doi:10.4304/jetwi.5.1.52-69.