Algorithms In Machine Learning Paradigms

This document was uploaded by one of our users. The uploader already confirmed that they had the permission to publish it. If you are author/publisher or own the copyright of this documents, please report to us by using this DMCA report form.

Simply click on the Download Book button.

Yes, Book downloads on Ebookily are 100% Free.

Sometimes the book is free on Amazon As well, so go ahead and hit "Search on Amazon"

This book presents studies involving algorithms in the machine learning paradigms. It discusses a variety of learning problems with diverse applications, including prediction, concept learning, explanation-based learning, case-based (exemplar-based) learning, statistical rule-based learning, feature extraction-based learning, optimization-based learning, quantum-inspired learning, multi-criteria-based learning and hybrid intelligence-based learning.

Author(s): Jyotsna Kumar Mandal, Somnath Mukhopadhyay, Paramartha Dutta, Kousik Dasgupta
Series: Studies In Computational Intelligence Vol. 870
Publisher: Springer
Year: 2020

Language: English
Pages: 201
Tags: Appl. Mathematics: Computational Methods Of Engineering

Editorial Preface......Page 6
Contents......Page 8
About the Editors......Page 10
1 Introduction......Page 12
2 Preliminaries......Page 14
2.2 Einstein Operations......Page 17
3 Hesitant-Intuitionistic Trapezoidal Fuzzy Number......Page 18
4 Hesitant-Intuitionistic Trapezoidal Fuzzy Prioritized Einstein-Based Aggregation Operators......Page 20
5 An Approach to Multi-criteria Group Decision-Making with H–ITF Information......Page 26
6 A Numerical Illustration......Page 29
7 Conclusions and Scope for Future Studies......Page 33
References......Page 34
1 Introduction......Page 36
2 Related Work......Page 38
3.1 Feature Relevance......Page 39
4 Proposed Approach......Page 40
5 Illustration......Page 44
6 Experiments and Outcome......Page 45
6.1 Summary of Outcome......Page 46
6.2 Overall Comparison of Performance......Page 50
7 Conclusion......Page 51
References......Page 52
1 Introduction......Page 54
2 Related Work......Page 56
3 Development of Expert System......Page 57
3.2 Components of Our Proposed Expert System......Page 58
4.2 Dataset Preparation......Page 60
5.2 Analysis......Page 62
6 Conclusion......Page 65
References......Page 66
1 Introduction......Page 67
2 Related Works......Page 68
3 Proposed Fuzzy Time Series Model......Page 69
4.2 Results and Discussion......Page 74
5 Conclusion and Future Work......Page 77
References......Page 78
Automatic Classification of Fruits and Vegetables: A Texture-Based Approach......Page 80
2 Previous Works......Page 81
3.1 Dataset......Page 83
3.4 Fractal Analysis......Page 84
3.5 Gray-Level Co-occurrence Matrix (GLCM) Analysis......Page 91
3.7 Classification......Page 92
4 Experimentation, Result, and Discussion......Page 93
5 Conclusion......Page 96
References......Page 97
Deep Learning-Based Early Sign Detection Model for Proliferative Diabetic Retinopathy in Neovascularization at the Disc......Page 99
1 Introduction......Page 100
2.1 Overview......Page 103
2.2 Data Preparation......Page 104
2.3 Preprocessing and Vessel Segmentation......Page 106
2.5 Network Architecture for NVD Diagnosis......Page 107
2.6 Observation for NVD Diagnosis......Page 110
3 Result and Discussion......Page 111
References......Page 114
A Linear Regression-Based Resource Utilization Prediction Policy for Live Migration in Cloud Computing......Page 117
1 Introduction......Page 118
1.1 Load Balancing in Cloud Computing......Page 119
2 Prerequisite to the Proposed Work-Linear Regression......Page 121
3 Problem Formulation Using Simulated Annealing (SA) and Linear Regression (LR)......Page 122
3.1 Linear Regression-Based Resource Utilization Procedure for VM Migration......Page 123
4 Overview of Simulation Tool CloudAnalyst......Page 128
5 Simulation with Results and Analysis......Page 129
References......Page 135
1 Introduction......Page 137
2 Proposed Methodology......Page 139
2.1 Facial Feature Points Detection......Page 140
2.2 Facial Feature Extraction......Page 141
2.3 Recognition of Facial Expression......Page 142
3 Experiment and Results......Page 143
3.1 Results on CK+ Database......Page 144
3.2 Results on MUG Database......Page 148
3.3 Results on MMI Database......Page 150
5 Conclusion......Page 152
References......Page 153
1 Introduction......Page 155
3 Motivation and Contribution......Page 157
4.1 Active Appearance Model (AAM)......Page 158
4.4 Circumcenter-Incenter-Centroid Trio......Page 160
4.5 MultiLayer Perceptron......Page 161
6 Results......Page 162
6.2 Japanese Female Facial Expression (JAFFE) Database......Page 163
6.3 MMI Database......Page 164
7 Discussions......Page 167
8 Conclusions......Page 170
References......Page 171
Stable Neighbor-Node Prediction with Multivariate Analysis in Mobile Ad Hoc Network Using RNN Model......Page 173
1 Introduction......Page 174
2 Related Works......Page 176
3.1 Time Lag Selection Methodology......Page 177
3.2 ERNN Configuration......Page 180
5 Results and Discussion......Page 181
6 Conclusion......Page 185
References......Page 186
A New Approach for Optimizing Initial Parameters of Lorenz Attractor and Its Application in PRNG......Page 188
1 Introduction......Page 189
2 Three Dimensional Lorenz System......Page 190
3 Proposed Method for Initial Seed Optimization for the Lorenz Attractor......Page 191
4 Proposed Method for Lorenz System Based PRNG......Page 194
5 Results and Analysis......Page 195
6 Conclusion and Future Scope......Page 198
References......Page 199
Author Index......Page 201