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Intro
Preface
Contents
1 Introduction to the Hybrid Method Between Fireworks Algorithm and Competitive Neural Network
References
2 Basic Concepts of Neural Networks and Fuzzy Logic
2.1 Artificial Neural Networks
2.2 Competitive Artificial Neural Network (CNN)
2.3 Optimization Algorithms
2.4 Fireworks Algorithm (FWA)
2.5 Clustering Algorithms
2.6 Clustering Index Validation
2.7 Fuzzy Logic
2.8 Interval Type-2 Fuzzy Logic
References
3 Hybrid Method Between Fireworks Algorithm and Competitive Neural Network
3.1 Datasets
3.1.1 Iris Dataset

3.1.2 Wine Dataset
3.1.3 Breast Cancer Wisconsin Diagnostic (WDBC)
3.2 Optimization Methods
3.2.1 FWAC
3.2.2 FFWAC
3.2.3 F2FWAC
3.3 Clustering Method
3.3.1 Competitive Neural Network
3.4 Classification Methods (Fuzzy Classifiers)
3.4.1 T1FIS-Mamdani and Sugeno Type
3.4.2 IT2FIS-Mamdani and Sugeno Type
References
4 Simulation Studies of the Hybrid of Fuzzy Fireworks and Competitive Neural Networks
4.1 Optimization Methods
4.1.1 Fireworks Algorithm for Clustering (FWAC)
4.1.2 Type 1 Fuzzy Logic Fireworks Algorithm for Clustering (FFWAC)

4.1.3 Interval Type 2 Fuzzy Logic Fireworks Algorithm for Clustering (F2FFWA)
4.2 Classification Methods
4.2.1 Type 1 FIS Classifier (T1FIS)
4.2.2 Interval Type 2 Fuzzy Logic Classifiers (IT2FIS)
4.3 Statistical Comparison Results of the Optimization of the Fuzzy Classification Models
5 Conclusions to the Hybrid Method Between Fireworks Algorithm and Competitive Neural Network
5.1 Future Works
Index

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