Optimization for Machine Learning and Machine Learning for Optimization
Buch, Englisch, 256 Seiten, Format (B × H): 161 mm x 240 mm, Gewicht: 548 g
ISBN: 978-1-78945-071-2
Verlag: Wiley
Machine learning and optimization techniques are revolutionizing our world. Other types of information technology have not progressed as rapidly in recent years, in terms of real impact. The aim of this book is to present some of the innovative techniques in the field of optimization and machine learning, and to demonstrate how to apply them in the fields of engineering.
Optimization and Machine Learning presents modern advances in the selection, configuration and engineering of algorithms that rely on machine learning and optimization. The first part of the book is dedicated to applications where optimization plays a major role, and the second part describes and implements several applications that are mainly based on machine learning techniques. The methods addressed in these chapters are compared against their competitors, and their effectiveness in their chosen field of application is illustrated.
Autoren/Hrsg.
Fachgebiete
Weitere Infos & Material
Introduction xi
Rachid CHELOUAH
Part 1 Optimization 1
Chapter 1 Vehicle Routing Problems with Loading Constraints: An Overview of Variants and Solution Methods 3
Ines SBAI and Saoussen KRICHEN
1.1 Introduction 3
1.2 The capacitated vehicle routing problem with two-dimensional loading constraints 5
1.2.1 Solution methods 6
1.2.2 Problem description 8
1.2.3 The 2L-CVRP variants 9
1.2.4 Computational analysis 10
1.3 The capacitated vehicle routing problem with three-dimensional loading constraints 11
1.3.1 Solution methods 11
1.3.2 Problem description 13
1.3.3 3L-CVRP variants 14
1.3.4 Computational analysis 16
1.4 Perspectives on future research 18
1.5 References 18
Chapter 2 MAS-aware Approach for QoS-based IoT Workflow Scheduling in Fog-Cloud Computing 25
Marwa MOKNI and Sonia YASSA
2.1 Introduction 26
2.2 Related works 27
2.3 Problem formulation 29
2.3.1 IoT-workflow modeling 31
2.3.2 Resources modeling 31
2.3.3 QoS-based workflow scheduling modeling 31
2.4 MAS-GA-based approach for IoT workflow scheduling 33
2.4.1 Architecture model 33
2.4.2 Multi-agent system model 34
2.4.3 MAS-based workflow scheduling process 35
2.5 GA-based workflow scheduling plan 38
2.5.1 Solution encoding 39
2.5.2 Fitness function 41
2.5.3 Mutation operator 41
2.6 Experimental study and analysis of the results 43
2.6.1 Experimental results 45
2.7 Conclusion 51
2.8 References 51
Chapter 3 Solving Feature Selection Problems Built on Population-based Metaheuristic Algorithms 55
Mohamed SASSI
3.1 Introduction 56
3.2 Algorithm inspiration 57
3.2.1 Wolf pack hierarchy 57
3.2.2 The four phases of pack hunting 58
3.3 Mathematical modeling 59
3.3.1 Pack hierarchy 59
3