D-Library Repositry

//uquui/

Reports Community

Annual Report Collection

 2020

 Using Machine Learning to Improve Evolutionary Multi-Objective Optimization

 ALotaibi, Rakan Saad


//uquui/handle/20.500.12248/117157
0 Downloads
1360 Visits

Using Machine Learning to Improve Evolutionary Multi-Objective Optimization

Call Number : 23775
Publisher :جامعة أم القرى
Pub Place : مكة المكرمة
Issue Date : 2020 - 1441 H
Description : 66 paper
Format : ماجستير
Language : انجليزي
Is format of : مكتبة الملك عبدالله بن عبدالعزيز الجامعية

Multiobjective optimization problems (MOPs) arise in many real-world applications. MOPs involve two or more objectives with the aim to be optimized. With these problems im- provement of one objective may led to deterioration of another. The primary goal of most multiobjective evolutionary algorithms (MOEA) is to generate a set of solutions for approx- imating the whole or part of the Pareto optimal front, which could provide decision makers a good insight to the problem.Over the last decades or so, several different and remarkable multiobjective evolutionary algorithms, have been developed with successful applications. However, MOEAs are still in their infancy. The objective of this research is to study how to use and apply machine learning (ML) to improve evolutionary multiobjective opti- misation (EMO). The EMO method is the multiobjective evolutionary algorithm based on decomposition (MOEA/D). The MOEA/D has become one of the most widely used algo- rithmic frameworks in the area of multiobjective evolutionary computation and won has won an international algorithm contest.

Title: Using Machine Learning to Improve Evolutionary Multi-Objective Optimization
Authors: Alhindi, Ahmad
ALotaibi, Rakan Saad
Subjects :: Machine Learning
Multi-Objective Evolutionary Algorithm
Issue Date :: 2020
Publisher :: جامعة أم القرى
Abstract: Multiobjective optimization problems (MOPs) arise in many real-world applications. MOPs involve two or more objectives with the aim to be optimized. With these problems im- provement of one objective may led to deterioration of another. The primary goal of most multiobjective evolutionary algorithms (MOEA) is to generate a set of solutions for approx- imating the whole or part of the Pareto optimal front, which could provide decision makers a good insight to the problem.Over the last decades or so, several different and remarkable multiobjective evolutionary algorithms, have been developed with successful applications. However, MOEAs are still in their infancy. The objective of this research is to study how to use and apply machine learning (ML) to improve evolutionary multiobjective opti- misation (EMO). The EMO method is the multiobjective evolutionary algorithm based on decomposition (MOEA/D). The MOEA/D has become one of the most widely used algo- rithmic frameworks in the area of multiobjective evolutionary computation and won has won an international algorithm contest.
Description :: 66 paper
URI: https://dorar.uqu.edu.sa/uquui/handle/20.500.12248/117157
Appears in Collections :الرسائل العلمية المحدثة

Files in This Item :
File Description SizeFormat 
23775.pdf
"   Restricted Access"
الرسالة الكاملة1.07 MBAdobe PDFView/Open
Request a copy
absa23775.pdf
"   Restricted Access"
ملخص الرسالة بالعربي65.66 kBAdobe PDFView/Open
Request a copy
abse23775.pdf
"   Restricted Access"
ملخص الرسالة بالإنجليزي156.25 kBAdobe PDFView/Open
Request a copy
indu23775.pdf
"   Restricted Access"
المقدمة597.11 kBAdobe PDFView/Open
Request a copy
cont23775.pdf
"   Restricted Access"
فهرس الموضوعات240.34 kBAdobe PDFView/Open
Request a copy
title23775.pdf
"   Restricted Access"
غلاف51.03 kBAdobe PDFView/Open
Request a copy
Add to Auditors PDF citation Digitization Request

Comments (0)



Items in D-Library are protected by copyright, with all rights reserved, unless otherwise indicated.