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Deanship of Graduate Studies
Document Details
Document Type
:
Thesis
Document Title
:
MULTI-CLASSIFICATION TASKS IN IMBALANCED DATASETS: ON THE SYNYRGY BETWEEN ROBUST PAIRWISE LEARNING TECHNIQUES AND FEATURE SELECTION
لتصنيف المتعدد البيانات غير المتوازنة: تآزر التصنيف الثنائي مع اختبار الخصائص
Subject
:
Faculty of Computing and Information Technology
Document Language
:
Arabic
Abstract
:
Classification in imbalanced datasets is one of the recurring problems in real-world applications of classification. It considered as a challenge since it needs to deal with uneven distribution of examples in the training datasets that lead to generate sub-optimal classification models. The presence of multiple classes implies an additional difficulty since the relations between the classes tend to complicated. One class can be a minority class for some, while a majority for others. So, we proposed a Local Feature Selection Classification model using OVO (LFSC-OVO) for multi-class imbalanced datasets, to improve the performance of the classification in terms of average accuracy. LFSC-OVO is constructed based on problem decomposition and feature selection. The novelty of the proposed work resides in the level of application feature selection in the classification procedure, since feature selection has not been previously used locally for each binary problem. LFSC-OVO is validated and tested by 7 multi-class imbalanced datasets from KEEL dataset repository using different base classifiers and aggregation methods. Then, a comparative study is conducted to compare the performance of LFSC-OVO versus another method in state-of-art. LFSC-OVO shows the best performance in all scenarios of using different base classifiers and aggregation methods as a result of decreasing the effect of the majority classes on the base classifiers.
Supervisor
:
Prof. Saleh M. Al-Shomrani
Thesis Type
:
Master Thesis
Publishing Year
:
1440 AH
2018 AD
Co-Supervisor
:
D. Aiiad A. Albeshri
Added Date
:
Sunday, November 25, 2018
Researchers
Researcher Name (Arabic)
Researcher Name (English)
Researcher Type
Dr Grade
Email
تهاني سعد المشدق
Al-Moshad, Tahani Saad
Researcher
Master
Files
File Name
Type
Description
43834.pdf
pdf
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