Fr. 102.00

Spectral Analysis of Growing Graphs - A Quantum Probability Point of View

Anglais · Livre de poche

Expédition généralement dans un délai de 3 à 5 semaines (titre commandé spécialement)

Description

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This book is designed as a concise introduction to the recent achievements on spectral analysis of graphs or networks from the point of view of quantum (or non-commutative) probability theory. The main topics are spectral distributions of the adjacency matrices of finite or infinite graphs and their limit distributions for growing graphs. The main vehicle is quantum probability, an algebraic extension of the traditional probability theory, which provides a new framework for the analysis of adjacency matrices revealing their non-commutative nature. For example, the method of quantum decomposition makes it possible to study spectral distributions by means of interacting Fock spaces or equivalently by orthogonal polynomials. Various concepts of independence in quantum probability and corresponding central limit theorems are used for the asymptotic study of spectral distributions for product graphs.This book is written for researchers, teachers, and students interested in graph spectra, their (asymptotic) spectral distributions, and various ideas and methods on the basis of quantum probability. It is also useful for a quick introduction to quantum probability and for an analytic basis of orthogonal polynomials.

Table des matières

1. Graphs and Matrices.- 2. Spectra of Finite Graphs.- 3. Spectral Distributions of Graphs.- 4. Orthogonal Polynomials and Fock Spaces.- 5. Analytic Theory of Moments.- 6. Method of Quantum Decomposition.- 7. Graph Products and Asymptotics.- References.- Index.

Résumé

This book is designed as a concise introduction to the recent achievements on spectral analysis of graphs or networks from the point of view of quantum (or non-commutative) probability theory. The main topics are spectral distributions of the adjacency matrices of finite or infinite graphs and their limit distributions for growing graphs. The main vehicle is quantum probability, an algebraic extension of the traditional probability theory, which provides a new framework for the analysis of adjacency matrices revealing their non-commutative nature. For example, the method of quantum decomposition makes it possible to study spectral distributions by means of interacting Fock spaces or equivalently by orthogonal polynomials. Various concepts of independence in quantum probability and corresponding central limit theorems are used for the asymptotic study of spectral distributions for product graphs.
This book is written for researchers, teachers, and students interested in graph spectra, their (asymptotic) spectral distributions, and various ideas and methods on the basis of quantum probability. It is also useful for a quick introduction to quantum probability and for an analytic basis of orthogonal polynomials.

Détails du produit

Auteurs Nobuaki Obata
Edition Springer, Berlin
 
Langues Anglais
Format d'édition Livre de poche
Sortie 01.01.2017
 
EAN 9789811035050
ISBN 978-981-10-3505-0
Pages 138
Dimensions 157 mm x 237 mm x 7 mm
Poids 248 g
Illustrations VIII, 138 p. 22 illus., 9 illus. in color.
Thèmes SpringerBriefs in Mathematical Physics
Springer
SpringerBriefs in Physics
SpringerBriefs in Mathematical Physics
Springerbriefs in Mathematical
Catégories Sciences naturelles, médecine, informatique, technique > Mathématiques > Autres

C, Mathematics and Statistics, Probability Theory and Stochastic Processes, Mathematical physics, Probability & statistics, Combinatorics & graph theory, Probabilities, Stochastics, Probability Theory, Graph Theory

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