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Index
Neural Network Programming with Java Second Edition
Table of Contents Neural Network Programming with Java Second Edition Credits About the Authors About the Reviewer www.PacktPub.com
eBooks, discount offers, and more
Why subscribe?
Customer Feedback Preface
What this book covers What you need for this book Who this book is for Conventions Reader feedback Customer support
Downloading the example code Errata Piracy Questions
1. Getting Started with Neural Networks
Discovering neural networks Why artificial neural networks?
How neural networks are arranged The very basic element – artificial neuron Giving life to neurons – activation function The flexible values – weights An extra parameter – bias The parts forming the whole – layers Learning about neural network architectures Monolayer networks Multilayer networks Feedforward networks Feedback networks
From ignorance to knowledge – learning process Let the coding begin! Neural networks in practice The neuron class The NeuralLayer class The ActivationFunction interface The neural network class Time to play! Summary
2. Getting Neural Networks to Learn
Learning ability in neural networks
How learning helps solving problems
Learning paradigms
Supervised learning Unsupervised learning
The learning process
The cost function finding the way down to the optimum Learning in progress - weight update Calculating the cost function General error and overall error Can the neural network learn forever? When is it good to stop?
Examples of learning algorithms
The delta rule The learning rate Implementing the delta rule The core of the delta rule learning - train and calcNewWeight methods Another learning algorithm - Hebbian learning Adaline
Time to see the learning in practice!
Teaching the neural network – the training dataset
Amazing, it learned! Or, did it really? A further step – testing
Overfitting and overtraining
Summary
3. Perceptrons and Supervised Learning
Supervised learning – teaching the neural net
Classification – finding the appropriate class Regression – mapping real inputs to outputs
A basic neural architecture – perceptrons
Applications and limitations Linear separation The XOR case
Multi-layer perceptrons
MLP properties MLP weights Recurrent MLP Coding an MLP
Learning in MLPs
Backpropagation algorithm The momentum Coding the backpropagation Levenberg-Marquardt algorithm Coding the Levenberg-Marquardt with matrix algebra Extreme learning machines
Practical example 1 – the XOR case with delta rule and backpropagation Practical example 2 – predicting enrolment status Summary
4. Self-Organizing Maps
Neural networks unsupervised learning Unsupervised learning algorithms
Competitive learning Competitive layer
Kohonen self-organizing maps
Extending the neural network code to Kohonen Zero-dimensional SOM One-dimensional SOM Two-dimensional SOM 2D competitive layer SOM learning algorithm Effect of neighboring neurons – the neighborhood function The learning rate A new class for competitive learning Visualizing the SOMs Plotting 2D training datasets and neuron weights Testing Kohonen learning
Summary
5. Forecasting Weather
Neural networks for regression problems Loading/selecting data
Building auxiliary classes Getting a dataset from a CSV file Building time series Dropping NaNs Getting weather data Weather variables
Choosing input and output variables Preprocessing
Normalization Adapting NeuralDataSet to handle normalization Adapting the learning algorithm to normalization Java implementation of weather forecasting Collecting weather data Delaying variables Loading the data and beginning to play! Let's perform a correlation analysis Creating neural networks Training and test
Training the neural network Plotting the error
Viewing the neural network output
Empirical design of neural networks
Designing experiments Results and simulations
Summary
6. Classifying Disease Diagnosis
Foundations of classification problems
Categorical data Working with categorical data
Logistic regression
Multiple classes versus binary classes Confusion matrix Sensitivity and specificity Implementing a confusion matrix
Neural networks for classification Disease diagnosis with neural networks
Breast cancer Diabetes
Summary
7. Clustering Customer Profiles
Clustering tasks
Cluster analysis Cluster evaluation and validation Implementation External validation
Applied unsupervised learning
Kohonen neural network
Profiling
Pre-processing Implementation in Java Card – credit analysis for customer profiling Product profiling How many clusters?
Summary
8. Text Recognition
Pattern recognition
Defined classes Undefined classes
Neural networks in pattern recognition
Data pre-processing Text recognition (optical character recognition) Digit recognition Digit representation Implementation in Java Generating data Neural architecture Experiments Results
Summary
9. Optimizing and Adapting Neural Networks
Common issues in neural network implementations Input selection
Data correlation Transforming data Dimensionality reduction Data filtering Cross-validation Structure selection
Online retraining
Stochastic online learning Implementation Application
Adaptive neural networks
Adaptive resonance theory Implementation
Summary
10. Current Trends in Neural Networks
Deep learning Deep architectures
How to implement deep learning in Java
Hybrid systems
Neuro-fuzzy Neuro-genetic
Implementing a hybrid neural network Summary
A. References
Chapter 1: Getting Started with Neural Networks Chapter 2: Getting Neural Networks to Learn Chapter 3: Perceptrons and Supervised Learning Chapter 4: Self-Organizing Maps Chapter 5: Forecasting Weather Chapter 6: Classifying Disease Diagnosis Chapter 7: Clustering Customer Profiles Chapter 8: Text Recognition Chapter 9: Optimizing and Adapting Neural Networks Chapter 10: Current Trends in Neural Networks
Index
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