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Published by Wiley-Liss .
Written in English


Book details:

Edition Notes

ContributionsHoward B. Eichenbaum (Editor), Joel L. Davis (Editor)
The Physical Object
Number of Pages267
ID Numbers
Open LibraryOL7612909M
ISBN 10047117940X
ISBN 109780471179405

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* Neuronal ensemble dynamics in the hippocampus and neocortexduring sleep and waking * Behavioral, electrophysiological, and genetic approaches to thestudy of synaptic plasticity and memory Neuronal Ensembles: Strategies for Recording and Decoding is animportant reference for researchers, graduate students, andpostdoctoral fellows in all areas Author: Howard B. Eichenbaum. Neuronal Ensembles: Strategies for Recording and Decoding presents a comprehensive treatment of multichannel recording techniques --how to apply them and how to analyze the vast amounts of data they generate. the book covers groundbreaking work in multichannel microelectrode technology, analyses of single neuron spike trains, and ensemble.   Introduction. Neurons form ensembles that encode experiences. This has been demonstrated in the past several decades by in vivo electrophysiological and calcium imaging experiments in which the activity of neuronal ensembles has been correlated with behavior in active animals (Buzsáki, ; Grewe and Helmchen, ).Understanding the process Cited by: Neuronal code or the 'language' that neuronal ensembles speak is very far from being understood. Currently, there are two main theories about neuronal code. The rate encoding theory states that individual neurons encode behaviorally significant parameters by their average firing rates, and the precise time of the occurrences of neuronal spikes.

Neurons form ensembles that encode experiences. This has been demonstrated in the past several decades by in vivo electrophysiological and calcium imaging experiments in which the activity of neuronal ensembles has been correlated with behavior in active animals (Buzsa´ki, ; Grewe and Helmchen, ). Large-scale recording of neuronal ensembles György Buzsáki György Buzsáki is at the Center for Molecular and Behavioral Neuroscience, Rutgers, The State University of New Jersey, Neuronal Ensembles: Strategies for Recording and Decoding Hardcover – 22 April by Howard B. Eichenbaum (Editor), Joel L. Davis (Editor) See all 2 formats and editions Hide other formats and editions. Amazon Price New from Format: Hardcover. Neural Mechanisms of Addiction is the only book available that synthesizes the latest research in the field into a single, accessible resource covering all aspects of how addiction develops and persists in the brain. The book summarizes our most recent understanding on the neural mechanisms underlying addiction.

Neuronal Ensembles in Addiction. Maladaptive learned behaviors are at the core of addiction. During drug use, addicts learn to associate their drug-taking activities with drug reward and environmental stimuli that eventually become cues that contribute to drug relapse,,,,,,.One important characteristic is that these drug-related cues and behaviors are nearly always Author: Bruce T. Hope. Biological neural networks / Howard B. Eichenbaum and Joel L. Davis --Extracellular recordings and analysis of neuronal activity: from single cells to ensembles / Zoltán Nádasdy [and others] --Relationship between neuronal codes and cortical organization / Barry J. Richmond and Timothy J. Gawne --Cell assemblies and the ghost in the machine. Beyond Boundaries introduces readers to Dr. Nicolelis's research on connecting brainstorms with brain-machine interfaces in order to reproduce complex movements. Beyond Boundaries also presents an overview of the author's experiments and findings so that readers can get a foundation for understanding neuronal ensembles and BMI by: Neural Network Ensembles, Cross Validation, and Active Learning Anders Krogh" Nordita Blegdamsvej 17 Copenhagen, Denmark Jesper Vedelsby Electronics Institute, Building Technical University of Denmark Lyngby, Denmark Abstract Learning of continuous valued functions using neural network en­.