語系:
繁體中文
English
日文
簡体中文
說明(常見問題)
登入
回首頁
切換:
標籤
|
MARC模式
|
ISBD
Mathematics for neuroscientists[elec...
~
Cox, Steven J. (1960-)
Mathematics for neuroscientists[electronic resource] /
紀錄類型:
書目-語言資料,印刷品 : Monograph/item
杜威分類號:
612.8
書名/作者:
Mathematics for neuroscientists/ Fabrizio Gabbiani, Steven J. Cox.
作者:
Gabbiani, Fabrizio.
其他作者:
Cox, Steven J.
出版者:
Amsterdam ; : Elsevier Academic Press,, 2010
面頁冊數:
xi, 486 p. : : ill. (some col.) ;; 28 cm.
標題:
Computational Biology - methods.
標題:
Models, Neurological.
標題:
Nerve Net.
標題:
Neurons - physiology.
標題:
Neurosciences - methods.
標題:
Synaptic Transmission.
標題:
Computational neuroscience.
標題:
Computational biology.
標題:
Neurosciences.
ISBN:
9780123748829
ISBN:
0123748828
書目註:
Includes bibliographical references (p. 473-482) and index.
內容註:
Passive isopotential cell -- Differential equations -- Active isopotential cell -- Quasi-active isopotential cell -- Passive cable -- Fourier series and transforms -- Passive dendritic tree -- Active dendritic tree -- Reduced single neuron models -- Probability and random variables -- Synaptic transmission and quantal release -- Neuronal calcium signaling -- Singular value decomposition and applications -- Quantification of spike train variability -- Stochastic processes -- Membrane noise -- Power and cross spectra -- Natural light signals and phototransduction -- Firing rate codes and early vision -- Models of simple and complex cells -- Stochastic estimation theory -- Reverse-correlation and spike train decoding -- Signal detection theory -- Relating neuronal responses and psychophysics -- Population codes -- Neuronal networks -- Solutions to selected exercises.
摘要、提要註:
This book provides a grounded introduction to the fundamental concepts of mathematics, neuroscience and their combined use, thus providing the reader with a springboard to cutting-edge research topics and fostering a tighter integration of mathematics and neuroscience for future generations of students. The book alternates between mathematical chapters, introducing important concepts and numerical methods, and neurobiological chapters, applying these concepts and methods to specific topics. It covers topics ranging from classical cellular biophysics and proceeding up to systems level neuroscience. Starting at an introductory mathematical level, presuming no more than calculus through elementary differential equations, the level will build up as increasingly complex techniques are introduced and combined with earlier ones. Each chapter includes a comprehensive series of exercises with solutions, taken from the set developed by the authors in their course lectures. MATLAB code is included for each computational figure, to allow the reader to reproduce them. Biographical notes referring the reader to more specialized literature and additional mathematical material that may be needed either to deepen the reader's understanding or to introduce basic concepts for less mathematically inclined readers completes each chapter. A very didactic and systematic introduction to mathematical concepts of importance for the analysis of data and the formulation of concepts based on experimental data in neuroscience Provides introductions to linear algebra, ordinary and partial differential equations, Fourier transforms, probabilities and stochastic processes Introduces numerical methods used to implement algorithms related to each mathematical concept Illustrates numerical methods by applying them to specific topics in neuroscience, including Hodgkin-Huxley equations, probabilities to describe stochastic release, stochastic processes to describe noise in neurons, Fourier transforms to describe the receptive fields of visual neurons Provides implementation examples in MATLAB code, also included for download on the accompanying support website (which will be updated with additional code and in line with major MATLAB releases) Allows the mathematical novice to analyze their results in more sophisticated ways, and consider them in a broader theoretical framework.
電子資源:
An electronic book accessible through the World Wide Web; click for information
Mathematics for neuroscientists[electronic resource] /
Gabbiani, Fabrizio.
Mathematics for neuroscientists
[electronic resource] /Fabrizio Gabbiani, Steven J. Cox. - 1st ed. - Amsterdam ;Elsevier Academic Press,2010 - xi, 486 p. :ill. (some col.) ;28 cm. - ScienceDirect.Book series..
Includes bibliographical references (p. 473-482) and index.
Passive isopotential cell -- Differential equations -- Active isopotential cell -- Quasi-active isopotential cell -- Passive cable -- Fourier series and transforms -- Passive dendritic tree -- Active dendritic tree -- Reduced single neuron models -- Probability and random variables -- Synaptic transmission and quantal release -- Neuronal calcium signaling -- Singular value decomposition and applications -- Quantification of spike train variability -- Stochastic processes -- Membrane noise -- Power and cross spectra -- Natural light signals and phototransduction -- Firing rate codes and early vision -- Models of simple and complex cells -- Stochastic estimation theory -- Reverse-correlation and spike train decoding -- Signal detection theory -- Relating neuronal responses and psychophysics -- Population codes -- Neuronal networks -- Solutions to selected exercises.
This book provides a grounded introduction to the fundamental concepts of mathematics, neuroscience and their combined use, thus providing the reader with a springboard to cutting-edge research topics and fostering a tighter integration of mathematics and neuroscience for future generations of students. The book alternates between mathematical chapters, introducing important concepts and numerical methods, and neurobiological chapters, applying these concepts and methods to specific topics. It covers topics ranging from classical cellular biophysics and proceeding up to systems level neuroscience. Starting at an introductory mathematical level, presuming no more than calculus through elementary differential equations, the level will build up as increasingly complex techniques are introduced and combined with earlier ones. Each chapter includes a comprehensive series of exercises with solutions, taken from the set developed by the authors in their course lectures. MATLAB code is included for each computational figure, to allow the reader to reproduce them. Biographical notes referring the reader to more specialized literature and additional mathematical material that may be needed either to deepen the reader's understanding or to introduce basic concepts for less mathematically inclined readers completes each chapter. A very didactic and systematic introduction to mathematical concepts of importance for the analysis of data and the formulation of concepts based on experimental data in neuroscience Provides introductions to linear algebra, ordinary and partial differential equations, Fourier transforms, probabilities and stochastic processes Introduces numerical methods used to implement algorithms related to each mathematical concept Illustrates numerical methods by applying them to specific topics in neuroscience, including Hodgkin-Huxley equations, probabilities to describe stochastic release, stochastic processes to describe noise in neurons, Fourier transforms to describe the receptive fields of visual neurons Provides implementation examples in MATLAB code, also included for download on the accompanying support website (which will be updated with additional code and in line with major MATLAB releases) Allows the mathematical novice to analyze their results in more sophisticated ways, and consider them in a broader theoretical framework.
Electronic reproduction.
Amsterdam :
Elsevier Science & Technology,
2010.
Mode of access: World Wide Web.
ISBN: 9780123748829
Source: 167007:167242Elsevier Science & Technologyhttp://www.sciencedirect.comSubjects--Topical Terms:
382384
Computational Biology
--methods.Index Terms--Genre/Form:
336502
Electronic books.
LC Class. No.: QP356 / .G22 2010
Dewey Class. No.: 612.8
Mathematics for neuroscientists[electronic resource] /
LDR
:04902cam 2200361Ka 4500
001
347025
003
OCoLC
005
20110614113942.0
006
m d
007
cr cn|||||||||
008
111130s2010 ne a sb 001 0 eng d
019
$a
664234213
020
$a
9780123748829
020
$a
0123748828
029
1
$a
NZ1
$b
13642330
035
$a
(OCoLC)668196264
$z
(OCoLC)664234213
035
$a
ocn668196264
037
$a
167007:167242
$b
Elsevier Science & Technology
$n
http://www.sciencedirect.com
040
$a
OPELS
$b
eng
$c
OPELS
$d
CDX
$d
LGG
049
$a
TEFA
050
1 4
$a
QP356
$b
.G22 2010
082
0 4
$a
612.8
$2
22
100
1
$a
Gabbiani, Fabrizio.
$3
428840
245
1 0
$a
Mathematics for neuroscientists
$h
[electronic resource] /
$c
Fabrizio Gabbiani, Steven J. Cox.
250
$a
1st ed.
260
$a
Amsterdam ;
$a
Boston :
$b
Elsevier Academic Press,
$c
2010
300
$a
xi, 486 p. :
$b
ill. (some col.) ;
$c
28 cm.
504
$a
Includes bibliographical references (p. 473-482) and index.
505
0
$a
Passive isopotential cell -- Differential equations -- Active isopotential cell -- Quasi-active isopotential cell -- Passive cable -- Fourier series and transforms -- Passive dendritic tree -- Active dendritic tree -- Reduced single neuron models -- Probability and random variables -- Synaptic transmission and quantal release -- Neuronal calcium signaling -- Singular value decomposition and applications -- Quantification of spike train variability -- Stochastic processes -- Membrane noise -- Power and cross spectra -- Natural light signals and phototransduction -- Firing rate codes and early vision -- Models of simple and complex cells -- Stochastic estimation theory -- Reverse-correlation and spike train decoding -- Signal detection theory -- Relating neuronal responses and psychophysics -- Population codes -- Neuronal networks -- Solutions to selected exercises.
520
$a
This book provides a grounded introduction to the fundamental concepts of mathematics, neuroscience and their combined use, thus providing the reader with a springboard to cutting-edge research topics and fostering a tighter integration of mathematics and neuroscience for future generations of students. The book alternates between mathematical chapters, introducing important concepts and numerical methods, and neurobiological chapters, applying these concepts and methods to specific topics. It covers topics ranging from classical cellular biophysics and proceeding up to systems level neuroscience. Starting at an introductory mathematical level, presuming no more than calculus through elementary differential equations, the level will build up as increasingly complex techniques are introduced and combined with earlier ones. Each chapter includes a comprehensive series of exercises with solutions, taken from the set developed by the authors in their course lectures. MATLAB code is included for each computational figure, to allow the reader to reproduce them. Biographical notes referring the reader to more specialized literature and additional mathematical material that may be needed either to deepen the reader's understanding or to introduce basic concepts for less mathematically inclined readers completes each chapter. A very didactic and systematic introduction to mathematical concepts of importance for the analysis of data and the formulation of concepts based on experimental data in neuroscience Provides introductions to linear algebra, ordinary and partial differential equations, Fourier transforms, probabilities and stochastic processes Introduces numerical methods used to implement algorithms related to each mathematical concept Illustrates numerical methods by applying them to specific topics in neuroscience, including Hodgkin-Huxley equations, probabilities to describe stochastic release, stochastic processes to describe noise in neurons, Fourier transforms to describe the receptive fields of visual neurons Provides implementation examples in MATLAB code, also included for download on the accompanying support website (which will be updated with additional code and in line with major MATLAB releases) Allows the mathematical novice to analyze their results in more sophisticated ways, and consider them in a broader theoretical framework.
533
$a
Electronic reproduction.
$b
Amsterdam :
$c
Elsevier Science & Technology,
$d
2010.
$n
Mode of access: World Wide Web.
$n
System requirements: Web browser.
$n
Title from title screen (viewed on Sep. 27, 2010).
$n
Access may be restricted to users at subscribing institutions.
650
1 2
$a
Computational Biology
$x
methods.
$3
382384
650
2 2
$a
Models, Neurological.
$3
405061
650
2 2
$a
Nerve Net.
$3
416460
650
2 2
$a
Neurons
$x
physiology.
$3
428843
650
2 2
$a
Neurosciences
$x
methods.
$3
428844
650
2 2
$a
Synaptic Transmission.
$3
428808
650
0
$a
Computational neuroscience.
$3
395302
650
0
$a
Computational biology.
$3
428845
650
0
$a
Neurosciences.
$3
372208
655
7
$a
Electronic books.
$2
local
$3
336502
700
1
$a
Cox, Steven J.
$q
(Steven James),
$d
1960-
$3
428841
710
2
$a
ScienceDirect (Online service)
$3
365609
776
0 8
$i
Print version:
$a
Gabbiani, Fabrizio.
$t
Mathematics for neuroscientists.
$b
1st ed.
$d
Amsterdam ; Boston : Elsevier Academic Press, 2010
$z
9780123748829
$w
(OCoLC)441761565
830
0
$a
ScienceDirect.
$p
Book series.
$3
428842
856
4 0
$3
ScienceDirect
$u
http://www.sciencedirect.com/science/book/9780123748829
$z
An electronic book accessible through the World Wide Web; click for information
938
$a
Coutts Information Services
$b
COUT
$n
15337534
994
$a
C0
$b
TEF
筆 0 讀者評論
多媒體
多媒體檔案
http://www.sciencedirect.com/science/book/9780123748829
評論
新增評論
分享你的心得
Export
取書館別
處理中
...
變更密碼
登入