De Gruyter Dynamic Fuzzy Machine Learning 1st Edition by Fanzhang Li, Li Zhang, Zhao Zhang – Ebook PDF Instant Download/Delivery: 9783110518757 ,3110518759
Full dowload De Gruyter Dynamic Fuzzy Machine Learning 1st Edition after payment
Product details:
ISBN 10: 3110518759
ISBN 13: 9783110518757
Author: Fanzhang Li, Li Zhang, Zhao Zhang
De Gruyter Dynamic Fuzzy Machine Learning 1st Edition Table of contents:
1 Dynamic fuzzy machine learning model
1.1 Problem statement
1.2 DFML model
1.2.1 Basic concept of DFMLs
1.2.2 DFML algorithm
1.2.3 DFML geometric model description
1.2.4 Simulation examples
1.3 Relative algorithm of DFMLS
1.3.1 Parameter learning algorithm for DFMLS
1.3.2 Maximum likelihood estimation algorithm in DFMLS
1.4 Process control model of DFMLS
1.4.1 Process control model of DFMLS
1.4.2 Stability analysis
1.4.3 Design of dynamic fuzzy learning controller
1.4.4 Simulation examples
1.5 Dynamic fuzzy relational learning algorithm
1.5.1 An outline of relational learning
1.5.2 Problem introduction
1.5.3 DFRL algorithm
1.5.4 Algorithm analysis
1.6 Summary
References
2 Dynamic fuzzy autonomic learning subspace algorithm
2.1 Research status of autonomic learning
2.2 Theoretical system of autonomous learning subspace based on DFL
2.2.1 Characteristics of AL
2.2.2 Axiom system of AL subspace
2.3 Algorithm of ALSS based on DFL
2.3.1 Preparation of algorithm
2.3.2 Algorithm of ALSS based on DFL
2.3.3 Case analysis
2.4 Summary
References
3 Dynamic fuzzy decision tree learning
3.1 Research status of decision trees
3.1.1 Overseas research status
3.1.2 Domestic research status
3.2 Decision tree methods for a dynamic fuzzy lattice
3.2.1 ID3 algorithm and examples
3.2.2 Characteristics of dynamic fuzzy analysis of decision trees
3.2.3 Representation methods for dynamic fuzzy problems in decision trees
3.2.4 DFDT classification attribute selection algorithm
3.2.5 Dynamic fuzzy binary decision tree
3.3 DFDT special attribute processing technique
3.3.1 Classification of attributes
3.3.2 Process used for enumerated attributes by DFDT
3.3.3 Process used for numeric attributes by DFDT
3.3.4 Methods to process missing value attributes in DFDT
3.4 Pruning strategy of DFDT
3.4.1 Reasons for pruning
3.4.2 Methods of pruning
3.4.3 DFDT pruning strategy
3.5 Application
3.5.1 Comparison of algorithm execution
3.5.2 Comparison of training accuracy
3.5.3 Comprehensibility comparisons
3.6 Summary
References
4 Concept learning based on dynamic fuzzy sets
4.1 Relationship between dynamic fuzzy sets and concept learning
4.2 Representation model of dynamic fuzzy concepts
4.3 DF concept learning space model
4.3.1 Order model of DF concept learning
4.3.2 DF concept learning calculation model
4.3.3 Dimensionality reduction model of DF instances
4.3.4 Dimensionality reduction model of DF attribute space
4.4 Concept learning model based on DF lattice
4.4.1 Construction of classical concept lattice
4.4.2 Constructing lattice algorithm based on DFS
4.4.3 DF Concept Lattice Reduction
4.4.4 Extraction of DF concept rules
4.4.5 Examples of algorithms and experimental analysis
4.5 Concept learning model based on DFDT
4.5.1 DF concept tree and generating strategy
4.5.2 Generation of DF Concepts
4.5.3 DF concept rule extraction and matching algorithm
4.6 Application examples and analysis
4.6.1 Face recognition experiment based on DF concept lattice
4.6.2 Data classification experiments on UCI datasets
4.7 Summary
References
5 Semi-supervised multi-task learning based on dynamic fuzzy sets
5.1 Introduction
5.1.1 Review of semi-supervised multi-task learning
5.1.2 Problem statement
5.2 Semi-supervised multi-task learning model
5.2.1 Semi-supervised learning
5.2.2 Multi-task learning
5.3 Semi-supervised multi-task learning model based on DFS
5.3.1 Dynamic fuzzy machine learning model
5.3.2 Dynamic fuzzy semi-supervised learning model
5.3.3 DFSSMTL model
5.4 Dynamic fuzzy semi-supervised multi-task matching algorithm
5.4.1 Dynamic fuzzy random probability
5.4.2 Dynamic fuzzy semi-supervised multi-task matching algorithm
5.4.3 Case analysis
5.5 DFSSMTAL algorithm
5.5.1 Mahalanobis distance metric
5.5.2 Dynamic fuzzy K-nearest neighbour algorithm
5.5.3 Dynamic fuzzy semi-supervised adaptive learning algorithm
5.6 Summary
References
6 Dynamic fuzzy hierarchical relationships
6.1 Introduction
6.1.1 Research progress of relationship learning
6.1.2 Questions proposed
6.1.3 Chapter structure
6.2 Inductive logic programming
6.3 Dynamic fuzzy HRL
6.3.1 DFL relation learning algorithm (DFLR)
6.3.2 Sample analysis
6.3.3 Dynamic fuzzy matrix HRL algorithm
6.3.4 Sample analysis
6.4 Dynamic fuzzy tree hierarchical relation learning
6.4.1 Dynamic fuzzy tree
6.4.2 Dynamic fuzzy tree hierarchy relationship learning algorithm
6.4.3 Sample analysis
6.5 Dynamic fuzzy graph hierarchical relationship learning
6.5.1 Basic concept of dynamic fuzzy graph
6.5.2 Dynamic fuzzy graph hierarchical relationship learning algorithm
6.5.3 Sample analysis
6.6 Sample application and analysis
6.6.1 Question description
6.6.2 Sample analysis
6.7 Summary
References
7 Multi-agent learning model based on dynamic fuzzy logic
7.1 Introduction
7.1.1 Strategic classification of the agent learning method
7.1.2 Characteristics of agent learning
7.1.3 Related work
7.2 Agent mental model based on DFL
7.2.1 Model structure
7.2.2 Related axioms
7.2.3 Working mechanism
7.3 Single-agent learning algorithm based on DFL
7.3.1 Learning task
7.3.2 Immediate return single-agent learning algorithm based on DFL
7.3.3 Q-learning function based on DFL
7.3.4 Q-learning algorithm based on DFL
7.4 Multi-agent learning algorithm based on DFL
7.4.1 Multi-agent learning model based on DFL
7.4.2 Cooperative multi-agent learning algorithm based on DFL
7.4.3 Competitive multi-agent learning algorithm based on DFL
7.5 Summary
References
8 Appendix
8.1 Dynamic fuzzy sets
8.1.1 Definition of dynamic fuzzy sets
8.1.2 Operation of dynamic fuzzy sets
8.1.3 Cut set of dynamic fuzzy sets
8.1.4 Dynamic fuzzy sets decomposition theorem
8.2 Dynamic fuzzy relations
8.2.1 The conception dynamic fuzzy relations
8.2.2 Property of dynamic fuzzy relations
8.2.3 Dynamic fuzzy matrix
8.3 Dynamic fuzzy logic
8.3.1 Dynamic fuzzy Boolean variable
8.3.2 DF proposition logic formation
8.4 Dynamic fuzzy lattice and its property
Index
People also search for De Gruyter Dynamic Fuzzy Machine Learning 1st Edition:
fuzzy deep learning
de gruyter graduate
de gruyter university press library
machine learning fuzzy logic
Reviews
There are no reviews yet.