Methods in Neuronal Modeling: From Ions to Networks - Computational Neuroscience (Hardback)
  • Methods in Neuronal Modeling: From Ions to Networks - Computational Neuroscience (Hardback)
zoom

Methods in Neuronal Modeling: From Ions to Networks - Computational Neuroscience (Hardback)

(editor), (editor)
£63.95
Hardback Published: 31/07/1998

This product is currently unavailable.

  • This item has been added to your basket
Much research focuses on the question of how information is processed in nervous systems, from the level of individual ionic channels to large-scale neuronal networks, and from "simple" animals such as sea slugs and flies to cats and primates. New interdisciplinary methodologies combine a bottom-up experimental methodology with the more top-down-driven computational and modeling approach. This book serves as a handbook of computational methods and techniques for modeling the functional properties of single and groups of nerve cells.The contributors highlight several key trends: (1) the tightening link between analytical/numerical models and the associated experimental data, (2) the broadening of modeling methods, at both the subcellular level and the level of large neuronal networks that incorporate real biophysical properties of neurons as well as the statistical properties of spike trains, and (3) the organization of the data gained by physical emulation of the nervous system components through the use of very large scale circuit integration (VLSI) technology.The field of neuroscience has grown dramatically since the first edition of this book was published nine years ago. Half of the chapters of the second edition are completely new; the remaining ones have all been thoroughly revised. Many chapters provide an opportunity for interactive tutorials and simulation programs. They can be accessed via Christof Koch's Website.Contributors : Larry F. Abbott, Paul R. Adams, Hagai Agmon-Snir, James M. Bower, Robert E. Burke, Erik de Schutter, Alain Destexhe, Rodney Douglas, Bard Ermentrout, Fabrizio Gabbiani, David Hansel, Michael Hines, Christof Koch, Misha Mahowald, Zachary F. Mainen, Eve Marder, Michael V. Mascagni, Alexander D. Protopapas, Wilfrid Rall, John Rinzel, Idan Segev, Terrence J. Sejnowski, Shihab Shamma, Arthur S. Sherman, Paul Smolen, Haim Sompolinsky, Michael Vanier, Walter M. Yamada.

Publisher: MIT Press Ltd
ISBN: 9780262112314
Weight: 1430 g
Dimensions: 231 x 183 x 38 mm
Edition: 2nd Revised edition

You may also be interested in...

Thoughtful Machine Learning
Added to basket
Music Recommendation and Discovery
Added to basket
Causality
Added to basket
£54.99
Hardback
Bayesian Reasoning and Machine Learning
Added to basket
The Elements of Statistical Learning
Added to basket
Artificial Intelligence
Added to basket
Why Greatness Cannot Be Planned
Added to basket
Introducing Artificial Intelligence
Added to basket
Artificial Intelligence: The Basics
Added to basket
Deep Learning
Added to basket
£47.99
Paperback
Visualize This
Added to basket
£30.99
Paperback
Computer Vision for Visual Effects
Added to basket
Superintelligence
Added to basket
£20.99
Hardback
Machine Learning
Added to basket

Please sign in to write a review

Your review has been submitted successfully.

env: aptum
branch: