The field of Artificial Neural Networks is the fastest growing field in Information Technology and specifically, in Artificial Intelligence and Machine Learning.
This must-have compendium presents the theory and case studies of artificial neural networks. The volume, with 4 new chapters, updates the earlier edition by highlighting recent developments in Deep-Learning Neural Networks, which are the recent leading approaches to neural networks. Uniquely, the book also includes case studies of applications of neural networks — demonstrating how such case studies are designed, executed and how their results are obtained.
The title is written for a one-semester graduate or senior-level undergraduate course on artificial neural networks. It is also intended to be a self-study and a reference text for scientists, engineers and for researchers in medicine, finance and data mining.
Contents:
- Introduction and Role of Artificial Neural Networks
- Fundamentals of Biological Neural Networks
- Basic Principles of ANNs and Their Structures
- The Perceptron
- The Madaline
- Back Propagation
- Hopfield Networks
- Counter Propagation
- Adaptive Resonance Theory
- The Cognitron and Neocognitron
- Statistical Training
- Recurrent (Time Cycling) Back Propagation Networks
- Deep Learning Neural Networks: Principles and Scope
- Deep Learning Convolutional Neural Networks
- LAMSTAR Neural Networks
- Performance of DLNN — Comparative Case Studies
Readership: Researchers, academics, professionals and senior undergraduate and graduate students in artificial intelligence, machine learning, neural networks and computer engineering.
Product details
- File Size: 66397 KB
- Print Length: 440 pages
- Publisher: World Scientific Publishing Company; 4 edition (March 15, 2019)
- Publication Date: March 15, 2019
- Language: English
- ASIN: B07QGJJS21
- Text-to-Speech:
Enabled
- Word Wise: Not Enabled
- Lending: Not Enabled
- #440
in AI & Semantics - #126
in Neural Networks - #300
in Computer Neural Networks