Overview
- Real-world applications
- Demonstrates the usefulness of structural graph theory as a tool for solving interdisciplinary problems
- For a broad, interdisciplinary readership of researchers, practitioners, and graduate students in discrete mathematics, statistics, computer science, machine learning, artificial intelligence, computational and systems biology, cognitive science, computational linguistics, and mathematical chemistry
- Includes supplementary material: sn.pub/extras
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Table of contents (19 chapters)
Keywords
- artificial intelligence
- biological networks
- complex networks
- computational and systems biology
- computational linguistics
- data mining
- graph polynomials
- graph representations
- mathematical chemistry
- network-based machine learning methods
- planar graphs
- structural graph analysis
- structural network analysis
- subgraphs
- combinatorics
About this book
Because of the increasing complexity and growth of real-world networks, their analysis by using classical graph-theoretic methods is oftentimes a difficult procedure. As a result, there is a strong need to combine graph-theoretic methods with mathematical techniques from other scientific disciplines, such as machine learning and information theory, in order to analyze complex networks more adequately.
Filling a gap in literature, this self-contained book presents theoretical and application-oriented results to structurally explore complex networks. The work focuses not only on classical graph-theoretic methods, but also demonstrates the usefulness of structural graph theory as a tool for solving interdisciplinary problems. Special emphasis is given to methods related to: applications in biology, chemistry, linguistics, and data analysis; graph colorings; graph polynomials; information measures for graphs; metrical properties of graphs; partitions and decompositions; and quantitative graph measures.
Structural Analysis of Complex Networks is suitable for a broad, interdisciplinary readership of researchers, practitioners, and graduate students in discrete mathematics, statistics, computer science, machine learning, artificial intelligence, computational and systems biology, cognitive science, computational linguistics, and mathematical chemistry. The book may be used as a supplementary textbook in graduate-level seminars on structural graph analysis, complex networks, or network-based machine learning methods.
Reviews
From the reviews:
“The book Structural Analysis of Complex Networks presents theoretical as well as practice-oriented results for structurally exploring networks, combining graph-theoretic methods with mathematical techniques from other scientific disciplines such as machine learning, statistics and information theory. … the book is addressed to an interdisciplinary audience, covering topics from artificial intelligence, computer science, computational and systems biology, cognitive science, computational linguistics, discrete mathematics, machine learning, mathematical chemistry and statistics.” (Sanzaiana Caraman, IASI Polytechnic Magazine, Vol. 22 (1/4), March-December, 2010)Editors and Affiliations
Bibliographic Information
Book Title: Structural Analysis of Complex Networks
Editors: Matthias Dehmer
DOI: https://doi.org/10.1007/978-0-8176-4789-6
Publisher: Birkhäuser Boston, MA
eBook Packages: Mathematics and Statistics, Mathematics and Statistics (R0)
Copyright Information: Springer Science+Business Media, LLC 2011
Hardcover ISBN: 978-0-8176-4788-9Published: 27 October 2010
eBook ISBN: 978-0-8176-4789-6Published: 14 October 2010
Edition Number: 1
Number of Pages: XIV, 486
Number of Illustrations: 85 b/w illustrations
Topics: Applications of Mathematics, Discrete Mathematics in Computer Science, Combinatorics, Computer Communication Networks, Computational Biology/Bioinformatics, Data Mining and Knowledge Discovery