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Dynamic Neuroscience: Statistics, Modeling, and Control

Dynamic Neuroscience: Statistics, Modeling, and Control

Publisher Springer, Berlin
Year
Pages 327
Version hardback
Language English
ISBN 9783319719757
Categories Biomedical engineering
Delivery to United States

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Book description

This book shows how to develop efficient quantitative methods to characterize neural data and extra information that reveals underlying dynamics and neurophysiological mechanisms. Written by active experts in the field, it contains an exchange of innovative ideas among researchers at both computational and experimental ends, as well as those at the interface. Authors discuss research challenges and new directions in emerging areas with two goals in mind: to collect recent advances in statistics, signal processing, modeling, and control methods in neuroscience; and to welcome and foster innovative or cross-disciplinary ideas along this line of research and discuss important research issues in neural data analysis. Making use of both tutorial and review materials, this book is written for neural, electrical, and biomedical engineers; computational neuroscientists; statisticians; computer scientists; and clinical engineers.

Dynamic Neuroscience: Statistics, Modeling, and Control

Table of contents

1. Introduction Part I Statistics & Signal Processing 2 Characterizing Complex, Multi-scale Neural Phenomena Using State-Space Models 3 Latent Variable Modeling of Neural Population Dynamics 4 What Can Trial-to-Trial Variability Tell Us? A Distribution-Based Approach to Spike Train Decoding in the Rat Hippocampus and Entorhinal Cortex 5 Sparsity Meets Dynamics: Robust Solutions to Neuronal Identification and Inverse Problems 6 Artifact Rejection for Concurrent TMS-EEG Data Part II Modeling & Control Theory 7 Characterizing Complex Human Behaviors and Neural Responses Using Dynamic Models 8 Brain-Machine Interfaces 9 Control-theoretic Approaches for Modeling, Analyzing and Manipulating Neuronal (In)activity 10 From Physiological Signals to Pulsatile Dynamics: A Sparse System Identification Approach 11 Neural Engine Hypothesis 12 Inferring Neuronal Network Mechanisms Underlying Anesthesia induced Oscillations Using Mathematical Models Epilogue

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