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978-1-4471-6353-4
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9781447163534
978-1-4471-6353-4
10.1007/978-1-4471-6353-4
doi
QA313
PBWR
bicssc
MAT034000
bisacsh
515.39
23
515.48
23
Jost, Jürgen.
author.
Mathematical Methods in Biology and Neurobiology
[electronic resource] /
by Jürgen Jost.
London :
Springer London :
Imprint: Springer,
2014.
X, 226 p. 37 illus., 13 illus. in color.
online resource.
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Universitext,
0172-5939
Introduction -- Discrete structures -- Stochastic processes -- Pattern formation -- Optimization -- Population genetics.
Mathematical models can be used to meet many of the challenges and opportunities offered by modern biology. The description of biological phenomena requires a range of mathematical theories. This is the case particularly for the emerging field of systems biology. Mathematical Methods in Biology and Neurobiology introduces and develops these mathematical structures and methods in a systematic manner. It studies: • discrete structures and graph theory • stochastic processes • dynamical systems and partial differential equations • optimization and the calculus of variations. The biological applications range from molecular to evolutionary and ecological levels, for example: • cellular reaction kinetics and gene regulation • biological pattern formation and chemotaxis • the biophysics and dynamics of neurons • the coding of information in neuronal systems • phylogenetic tree reconstruction • branching processes and population genetics • optimal resource allocation • sexual recombination • the interaction of species. Written by one of the most experienced and successful authors of advanced mathematical textbooks, this book stands apart for the wide range of mathematical tools that are featured. It will be useful for graduate students and researchers in mathematics and physics that want a comprehensive overview and a working knowledge of the mathematical tools that can be applied in biology. It will also be useful for biologists with some mathematical background that want to learn more about the mathematical methods available to deal with biological structures and data.
Mathematics.
Dynamics.
Ergodic theory.
Partial differential equations.
System theory.
Neural networks (Computer science).
Calculus of variations.
Combinatorics.
Mathematics.
Dynamical Systems and Ergodic Theory.
Partial Differential Equations.
Complex Systems.
Mathematical Models of Cognitive Processes and Neural Networks.
Calculus of Variations and Optimal Control; Optimization.
Combinatorics.
SpringerLink (Online service)
Springer eBooks
Printed edition:
9781447163527
Universitext,
0172-5939
http://dx.doi.org/10.1007/978-1-4471-6353-4
ZDB-2-SMA
370441
370441
0
0
0
0
EBook
elib
elib
2018-01-15
0
2018-01-15
2018-01-15
EBOOK