Lex

Browse

GenresShelvesPremiumBlog

Company

AboutJobsPartnersSell on LexAffiliates

Resources

DocsInvite FriendsFAQ

Legal

Terms of ServicePrivacy Policygeneral@lex-books.com(215) 703-8277

© 2026 LexBooks, Inc. All rights reserved.

Statistical and machine learning approaches for network analysisStatistical and machine learning approaches for network analysis

Statistical and machine learning approaches for network analysis

Matthias Dehmer

About this book

"This book explores novel graph classes and presents novel methods to classify networks. It particularly addresses the following problems: exploration of novel graph classes and their relationships among each other; existing and classical methods to analyze networks; novel graph similarity and graph classification techniques based on machine learning methods; and applications of graph classification and graph mining. Key topics are addressed in depth including the mathematical definition of novel graph classes, i.e. generalized trees and directed universal hierarchical graphs, and the application areas in which to apply graph classes to practical problems in computational biology, computer science, mathematics, mathematical psychology, etc"--

Details

OL Work ID
OL16557641W

Subjects

Statistical methodsMachine theoryNetwork analysisGraphic methodsCommunicationResearchInformation scienceMATHEMATICS / Probability & Statistics / GeneralNewspaper publishingPublishers and publishingBiographyHistoryArtificial IntelligenceComputer Communication Networks

Find this book

Open Library
Book data from Open Library. Cover images courtesy of Open Library.