Main Page
About FCIT
History
Strategy
Administration>
Current Administration
Prevouis Administration
Organization Strucutre
Industrial Advisory Board
PhotoAlbum
Lab Guides
Departments
Computer Science
Information Technology
Information Systems
Academics
Bachelor Programs
Graduate Programs
Executive Programs
Academic Calendar
Admission
Bachelor Degree & Transferring
Admission from the Foundation Year
Transferring to the Faculty
Graduate Studies
Graduate Programs
Executive Programs
Scientific Research
Groups and Units
Research Groups
Research Interests
Distinguished Scientists Program
Faculty Journal
Faculty and Staff
Faculty
CS Department
IT Department
IS Department
Staff
Accreditation Integration & Management System (AIM
Development and Quality Unit
Work at FCIT
Capabilities Under the Spotlight
Code of Ethics
Students
Bachelor
ِAcademic Services
Preparatory Year Courses
Students' Guide
Academic Advising
Laboratories and Facilities
Student rights and duties
Graduate
Polices and Regulations
Students' Guide
Student's Handbook
New Student Orientation
Templates of proposals and theses for masters and
Courses
CS Program
IT Program
IS Program
Alumni Registration
Students Activities
Entrepreneurship Club
Cybersecurity Club
Data Science Club
Programming Club
Community
Industrial partnerships
Cisco Academy
Microsoft Academy
Oracle Academy
Files
Researches
Contact Us
عربي
English
About
Admission
Academic
Research and Innovations
University Life
E-Services
Search
Faculty of Computing and Information Technology
Document Details
Document Type
:
Article In Journal
Document Title
:
TDM Modeling and Evaluation of Different Domain Transforms for LSI
نمذجة مصفوفة (TDM) وتقييم محولات المجال المختلفة للفهرسة الدلالية الكامنة
Subject
:
Hybrid Information Retrieval approach using Image Processing Transform
Document Language
:
English
Abstract
:
Latent semantic indexing (LSI) is a popular technique used in information retrieval (IR) applications. This paper presents a novel evaluation strategy based on the use of image processing tools. The authors evaluate the use of the discrete cosine transform (DCT) and Cohen Daubechies Feauveau 9/7 (CDF9/7) wavelet transform as a preprocessing step for the singular value decomposition (SVD) step of the LSI system. In addition, the effect of different threshold types on the search results is examined. The results show that accuracy can be increased by applying both transforms as a preprocessing step, with better performance for the hard-threshold function. The choice of the best threshold value is a key factor in the transform process. This paper also describes the most effective structure for the database to facilitate efficient searching in the LSI system.
ISSN
:
0925-2312
Journal Name
:
Elsevier Neurocomputing.
Volume
:
72
Issue Number
:
10-12
Publishing Year
:
1430 AH
2009 AD
Article Type
:
Article
Added Date
:
Sunday, July 1, 2012
Researchers
Researcher Name (Arabic)
Researcher Name (English)
Researcher Type
Dr Grade
Email
طارق جبر
Jaber, Tareq
Investigator
tjaber01@qub.ac.uk
Abbes Amira
Amira, Abbes
Researcher
a.amira@ulster.ac.uk
Peter Milligan
Milligan, Peter
Researcher
p.milligan@qub.ac.uk
Files
File Name
Type
Description
33829.pdf
pdf
Back To Researches Page