Neural and adaptive systems: fundamentals through simulations
Develop New Insight into the Behavior of Adaptive Systems This one-of-a-kind interactive book and CD-ROM will help you develop a better understanding of the behavior of adaptive systems. Developed as part of a project aimed at innovating the teaching of adaptive systems in science and engineering, it unifies the concepts of neural networks and adaptive filters into a common framework. It begins by explaining the fundamentals of adaptive linear regression and builds on these concepts to explore pattern classification, function approximation, feature extraction, and time-series modeling/prediction. The text is integrated with the industry standard neural network/adaptive system simulator NeuroSolutions. This allows the authors to demonstrate and reinforce key concepts using over 200 interactive examples. Each of these examples is 'live,' allowing the user to change parameters and experiment first-hand with real-world adaptive systems. This creates a powerful environment for learning through both visualization and experimentation. Key Features of the Text
* The text and CD combine to become an interactive learning tool.
* Emphasis is on understanding the behavior of adaptive systems rather than mathematical derivations.
* Each key concept is followed by an interactive example.
* Over 200 fully functional simulations of adaptive systems are included.
* The text and CD offer a unified view of neural networks, adaptive filters, pattern recognition, and support vector machines.
* Hyperlinks allow instant access to keyword definitions, bibliographic references, equations, and advanced discussions of concepts.
The CD-ROM Contains:
* A complete, electronic version of the text in hypertext format
* NeuroSolutions, an industry standard, icon-based neural network/adaptive system simulator
* A tutorial on how to use NeuroSolutions
* Additional data files to use with the simulator
"An innovative approach to describing neurocomputing and adaptive learning systems from a perspective which unifies classical linear adaptive systems approaches with the modern advances in neural networks. It is rich in examples and practical insight." -James Zeidler, University of California, San Diego
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Adaline adaptive systems Adatron Axon backpropagation bias Breadboard called Chapter complex component compute confusion matrix convergence covariance create criterion cross-validation data clusters data set decision surface decrease delta rule derivative desired response dimension discriminant function eigenvalue elementary functions equation error estimate Figure filter function approximation Gaussian goal gradient descent gradient-descent Hebbian Hebbian learning hidden layer hidden PEs hyperplane implement input data input space input-output iterations learning curve learning machine learning rate linear combiner linear regression linear system LMS algorithm mapping mean square error minimize minimum neural network NEUROSOLUTIONS EXAMPLE Newton's method noise nonlinear norm normally Notice obtained on-line one-hidden-layer MLP optimal classifier parameters pattern recognition perceptron performance surface plot polynomial posteriori probabilities problem produce projection quadratic regressor samples shows softmax solution solve Synapse tanh threshold topology training set variable variance weight tracks weight update weight vector zero