Computational Network Theory

Computational Network Theory
Author: Matthias Dehmer,Frank Emmert-Streib,Stefan Pickl
Publsiher: John Wiley & Sons
Total Pages: 280
Release: 2015-05-04
Genre: Medical
ISBN: 9783527691548

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This comprehensive introduction to computational network theory as a branch of network theory builds on the understanding that such networks are a tool to derive or verify hypotheses by applying computational techniques to large scale network data. The highly experienced team of editors and high-profile authors from around the world present and explain a number of methods that are representative of computational network theory, derived from graph theory, as well as computational and statistical techniques. With its coherent structure and homogenous style, this reference is equally suitable for courses on computational networks.

Computational Network Theory

Computational Network Theory
Author: Matthias Dehmer,Frank Emmert-Streib,Stefan Pickl
Publsiher: Unknown
Total Pages: 135
Release: 2015
Genre: Computational intelligence
ISBN: 3527691510

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Computational Network Theory

Computational Network Theory
Author: Matthias Dehmer,Frank Emmert-Streib,Stefan Pickl
Publsiher: John Wiley & Sons
Total Pages: 278
Release: 2015-11-16
Genre: Medical
ISBN: 9783527337248

Download Computational Network Theory Book in PDF, Epub and Kindle

This comprehensive introduction to computational network theory as a branch of network theory builds on the understanding that such networks are a tool to derive or verify hypotheses by applying computational techniques to large scale network data. The highly experienced team of editors and high-profile authors from around the world present and explain a number of methods that are representative of computational network theory, derived from graph theory, as well as computational and statistical techniques. With its coherent structure and homogenous style, this reference is equally suitable for courses on computational networks.

Computational Graph Theory

Computational Graph Theory
Author: Gottfried Tinhofer,Rudolf Albrecht,Ernst Mayr,Hartmut Noltemeier,Maciej M. Syslo
Publsiher: Springer Science & Business Media
Total Pages: 282
Release: 2012-12-06
Genre: Computers
ISBN: 9783709190760

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One ofthe most important aspects in research fields where mathematics is "applied is the construction of a formal model of a real system. As for structural relations, graphs have turned out to provide the most appropriate tool for setting up the mathematical model. This is certainly one of the reasons for the rapid expansion in graph theory during the last decades. Furthermore, in recent years it also became clear that the two disciplines of graph theory and computer science have very much in common, and that each one has been capable of assisting significantly in the development of the other. On one hand, graph theorists have found that many of their problems can be solved by the use of com puting techniques, and on the other hand, computer scientists have realized that many of their concepts, with which they have to deal, may be conveniently expressed in the lan guage of graph theory, and that standard results in graph theory are often very relevant to the solution of problems concerning them. As a consequence, a tremendous number of publications has appeared, dealing with graphtheoretical problems from a computational point of view or treating computational problems using graph theoretical concepts.

Computing in Communication Networks

Computing in Communication Networks
Author: Frank H.P. Fitzek,Fabrizio Granelli,Patrick Seeling
Publsiher: Academic Press
Total Pages: 524
Release: 2020-05-20
Genre: Technology & Engineering
ISBN: 9780128209042

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Computing in Communication Networks: From Theory to Practice provides comprehensive details and practical implementation tactics on the novel concepts and enabling technologies at the core of the paradigm shift from store and forward (dumb) to compute and forward (intelligent) in future communication networks and systems. The book explains how to create virtualized large scale testbeds using well-established open source software, such as Mininet and Docker. It shows how and where to place disruptive techniques, such as machine learning, compressed sensing, or network coding in a newly built testbed. In addition, it presents a comprehensive overview of current standardization activities. Specific chapters explore upcoming communication networks that support verticals in transportation, industry, construction, agriculture, health care and energy grids, underlying concepts, such as network slicing and mobile edge cloud, enabling technologies, such as SDN/NFV/ ICN, disruptive innovations, such as network coding, compressed sensing and machine learning, how to build a virtualized network infrastructure testbed on one’s own computer, and more. Provides a uniquely comprehensive overview on the individual building blocks that comprise the concept of computing in future networks Gives practical hands-on activities to bridge theory and implementation Includes software and examples that are not only employed throughout the book, but also hosted on a dedicated website

Temporal Network Theory

Temporal Network Theory
Author: Petter Holme,Jari Saramäki
Publsiher: Springer Nature
Total Pages: 375
Release: 2019-10-29
Genre: Science
ISBN: 9783030234959

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This book focuses on the theoretical side of temporal network research and gives an overview of the state of the art in the field. Curated by two pioneers in the field who have helped to shape it, the book contains contributions from many leading researchers. Temporal networks fill the border area between network science and time-series analysis and are relevant for the modeling of epidemics, optimization of transportation and logistics, as well as understanding biological phenomena. Network theory has proven, over the past 20 years to be one of the most powerful tools for the study and analysis of complex systems. Temporal network theory is perhaps the most recent significant development in the field in recent years, with direct applications to many of the "big data" sets. This monograph will appeal to students, researchers and professionals alike interested in theory and temporal networks, a field that has grown tremendously over the last decade.

Computational Learning Theory and Natural Learning Systems Intersections between theory and experiment

Computational Learning Theory and Natural Learning Systems  Intersections between theory and experiment
Author: Stephen José Hanson,Ronald L. Rivest
Publsiher: Mit Press
Total Pages: 449
Release: 1994
Genre: Computers
ISBN: 0262581337

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Annotation These original contributions converge on an exciting and fruitful intersection of three historically distinct areas of learning research: computational learning theory, neural networks, and symbolic machine learning. Bridging theory and practice, computer science and psychology, they consider general issues in learning systems that could provide constraints for theory and at the same time interpret theoretical results in the context of experiments with actual learning systems. In all, nineteen chapters address questions such as, What is a natural system? How should learning systems gain from prior knowledge? If prior knowledge is important, how can we quantify how important? What makes a learning problem hard? How are neural networks and symbolic machine learning approaches similar? Is there a fundamental difference in the kind of task a neural network can easily solve as opposed to those a symbolic algorithm can easily solve? Stephen J. Hanson heads the Learning Systems Department at Siemens Corporate Research and is a Visiting Member of the Research Staff and Research Collaborator at the Cognitive Science Laboratory at Princeton University. George A. Drastal is Senior Research Scientist at Siemens Corporate Research. Ronald J. Rivest is Professor of Computer Science and Associate Director of the Laboratory for Computer Science at the Massachusetts Institute of Technology.

Network Models for Data Science

Network Models for Data Science
Author: Alan Julian Izenman
Publsiher: Cambridge University Press
Total Pages: 502
Release: 2023-01-05
Genre: Mathematics
ISBN: 9781108889032

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This text on the theory and applications of network science is aimed at beginning graduate students in statistics, data science, computer science, machine learning, and mathematics, as well as advanced students in business, computational biology, physics, social science, and engineering working with large, complex relational data sets. It provides an exciting array of analysis tools, including probability models, graph theory, and computational algorithms, exposing students to ways of thinking about types of data that are different from typical statistical data. Concepts are demonstrated in the context of real applications, such as relationships between financial institutions, between genes or proteins, between neurons in the brain, and between terrorist groups. Methods and models described in detail include random graph models, percolation processes, methods for sampling from huge networks, network partitioning, and community detection. In addition to static networks the book introduces dynamic networks such as epidemics, where time is an important component.