Semantic Boolean Arabic Information Retrieval
Journal: The International Arab Journal of Information Technology (Vol.12, No. 3)Publication Date: 2015-05-01
Authors : Emad Elabd; Eissa Alshari; Hatem Abdulkader;
Page : 311-316
Keywords : AIR; semantic web; arabic language; ontology;
Abstract
Arabic language is one of the most widely spoken languages. This language has a complex morphological structure and is considered as one of the most prolific languages in terms of article linguistic. Therefore, Arabic Information Retrieval (AIR) models need specific techniques to deal with this complex morphological structure. This paper aims to develop an integrate AIR frameworks. It lists and analysis the different Information Retrieval (IR) methods and techniques such as query processing, stemming and indexing which are used in AIR systems. We conclude that AIR frameworks have a weakness to deal with semantic in term of indexing, Boolean model, Latent Semantic Analysis (LSA), Latent Semantic Index (LSI) and semantic ranking. Therefore, semantic Boolean IR framework is proposed in this paper. This model is implemented and the precision, recall and run time are measured and compared with the traditional IR model
Other Latest Articles
- A Human Activity Recognition System using HMMs with GDA on Enhanced Independent Component Features
- Stability Coalition Formation with Cost Sharing in Multi-Agent Systems Based on Volume Discount
- A Comparative Analysis of Software Protection Schemes
- A Hierarchical Approach to Improve Job Scheduling and Data Replication in Data Grid
- Novel Approaches for Scheduling Task Graphs in Heterogeneous Distributed Computing Environment
Last modified: 2019-11-17 18:23:32