Ahmed Sharaf Eldin Ahmed

Work place: Information Systems Department, Faculty of Computers & Information, Helwan University, Egypt

E-mail: profase2000@yahoo.com

Website:

Research Interests: Computational Science and Engineering, Software Construction, Software Development Process, Software Engineering

Biography

Ahmed Sharaf Eldin Ahmed: A recognized Prof. in CS and IS in Egypt. He authored more than 150 papers in international, national journals and conferences. He is the founder and coordinator of the B. Sc. Software Engineering academic program at HU. He is also the founder and manager of the Student Assessment Centre at HU. He was also the founder and manager of the quality assurance centre at HU. He is also one of the Egyptian members of the “Bologna Promoters” formed and funded by EU/Tempus. Its aim was to promote the Bologna process among the partner countries (Egypt is one of them). He was the coordinator of two Tempus III projects (M024A04-2004 and 31053-2003). He has a broad experience in curriculum development according to the European standards.

Author Articles
Utilizing Conceptual Indexing to Enhance the Effectiveness of Vector Space Model

By Aya M. Al-Zoghby Ahmed Sharaf Eldin Ahmed Taher T. Hamza

DOI: https://doi.org/10.5815/ijitcs.2013.11.01, Pub. Date: 8 Oct. 2013

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.

[...] Read more.
Other Articles