ABSTRACT

This thoroughly, thoughtfully revised edition of a very successful textbook makes the principles and the details of neural network modeling accessible to cognitive scientists of all varieties as well as to others interested in these models. Research since the publication of the first edition has been systematically incorporated into a framework of proven pedagogical value.

Features of the second edition include:
* A new section on spatiotemporal pattern processing
* Coverage of ARTMAP networks (the supervised version of adaptive resonance networks) and recurrent back-propagation networks
* A vastly expanded section on models of specific brain areas, such as the cerebellum, hippocampus, basal ganglia, and visual and motor cortex
* Up-to-date coverage of applications of neural networks in areas such as combinatorial optimization and knowledge representation

As in the first edition, the text includes extensive introductions to neuroscience and to differential and difference equations as appendices for students without the requisite background in these areas. As graphically revealed in the flowchart in the front of the book, the text begins with simpler processes and builds up to more complex multilevel functional systems.

For more information visit the author's personal Web site at www.uta.edu/psychology/faculty/levine/

chapter 1|10 pages

Brain and Machine: The Same Principles?

chapter 2|30 pages

Historical Outline

chapter 5|43 pages

Conditioning, Attention, and Reinforcement

chapter 6|82 pages

Coding and Categorization

chapter 8|10 pages

A Few Recent Technical Advances