Neural Networks and Statistical Learning
This book provides a broad yet detailed introduction to neural networks and machine learning in a statistical framework. A single, comprehensive resource for study and further research, it explores the major popular neural network models and statistical learning approaches with examples and exercise...
Main Authors: | , |
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Corporate Author: | |
Format: | Electronic eBook |
Language: | English |
Published: |
London :
Springer London : Imprint: Springer,
2019.
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Edition: | 2nd ed. 2019. |
Subjects: | |
Online Access: | Full Text via HEAL-Link |
Table of Contents:
- Introduction
- Fundamentals of Machine Learning
- Perceptrons
- Multilayer perceptrons: architecture and error backpropagation
- Multilayer perceptrons: other learing techniques
- Hopfield networks, simulated annealing and chaotic neural networks
- Associative memory networks
- Clustering I: Basic clustering models and algorithms
- Clustering II: topics in clustering
- Radial basis function networks
- Recurrent neural networks
- Principal component analysis
- Nonnegative matrix factorization and compressed sensing
- Independent component analysis
- Discriminant analysis
- Support vector machines
- Other kernel methods
- Reinforcement learning
- Probabilistic and Bayesian networks
- Combining multiple learners: data fusion and emsemble learning
- Introduction of fuzzy sets and logic
- Neurofuzzy systems
- Neural circuits
- Pattern recognition for biometrics and bioinformatics
- Data mining.