NEW PRODUCTS, LAPTOP, NOTEBOOK, COMPUTER, ELECTRONICS, MOLECULAR BIOLOGY, BRAIN RESEARCH and HUMAN MEMORY BOOKS

Search
 Books

Neuron

Protein Biochemistry

Macromolecules

DNA Molecules

Molecular Biology

Brain Memory

Cognitive Simulation

Creativity and the Brain

Machine Learning

Learning and Memory

Human Genome

Molecular Electronics

Nanoelectronics

Nano sensors

Nanotechnology

Molecular Memory

Human and Animal Senses

Human Senses

Neuron Information Coding

Neurological Systems

Brain Research

Molecular Modeling

Home

Books

Neuron Information Coding

Spiking Neuron Models

Spiking Neuron Models
Email a friendEmailView larger imageZoom

Spiking Neuron Models

 
 
List Price: $70.00
Our Price: $63.00
You Save: $7.00 (10%)
Shipping: This item ships for FREE with Super Saver Shipping.
 
SKU:  

In Stock
Availability:   Usually ships in 1 business days
 
 

Note: Item may be sold and shipped by another company. Learn more.


Description

This introduction to spiking neurons can be used in advanced-level courses in computational neuroscience, theoretical biology, neural modeling, biophysics, or neural networks. It focuses on phenomenological approaches rather than detailed models in order to provide the reader with a conceptual framework. The authors formulate the theoretical concepts clearly without many mathematical details. While the book contains standard material for courses in computational neuroscience, neural modeling, or neural networks, it also provides an entry to current research. No prior knowledge beyond undergraduate mathematics is required.


Product Details
Author:Wulfram Gerstner
Paperback:400 pages
Publisher:Cambridge University Press
Publication Date:August 15, 2002
Language:English
ISBN:0521890799
Package Length:9.61 inches
Package Width:6.85 inches
Package Height:0.87 inches
Package Weight:2.2 pounds
Average Customer Rating: based on 3 reviews

Customer Reviews
Average Customer Review:5.0
Write an online review and share your thoughts with other customers.

3 of 3 found the following review helpful:

5excellent book  Dec 01, 2007
very well written, easy to understand, walks you through the logic of each part of each equation. builds up more and more complex models based upon the previous models. You'll learn a lot of practical neurobiology stuff other than just modeling too.

9 of 9 found the following review helpful:

5Impressive book  Aug 30, 2004
This is a very impressive book. It covers in a systematic manner a broad portion of the field of theoretical neuroscience. It covers topics from models of single spiking neurons, through networks of interconnected neurons and up to neuronal plasticity. This book is also written very well. The style of this book reflects the background of the authors as Physicists; it therefore strives for simplicity wherever possible.
I used chapters from this book as a basis for some of my lectures in a course I teach: Introduction to Theoretical/Computational Neuroscience, a graduate level course. I especially liked the systematic approach they have adopted for describing various simplifications of the Hodgkin-Huxley equations.


17 of 17 found the following review helpful:

5All you ever wanted to know about spiking neuron models  Aug 19, 2004
I have used this book as an introduction and reference book for modeling neurons since I started my thesis work in computational neuroscience two years ago. It covers various types of spiking neuron models (e.g. Hodgkin-Huxley, Morris-Lecar, Integrate&Fire, Spike-Response-Model), noise in neuron models, population models, and plasticity/learning.
It is a very useful book, clearly written and comprehensive, providing sufficient detail and background information. Derivations of the equations are clearly presented and understandable to anyone with a decent knowledge of mathematics. A degree in physics is not required in order to read this book ;-) With this book and some programming skills, one has a solid foundation for modeling neurons on various levels.
I also like the literature recommendations at the end of each chapter, they give a good overview over important original papers and further reviews.
I would strongly recommend this book to undergraduate and PhD-students in computational neuroscience, as well as to anyone interested in modeling neurons.

 About UsContact Us
Web business powered by Amazon WebStore