Artificial Intelligence and Quantum Computing for Advanced Wireless Networks

Author:   Savo G. Glisic (University of Oulu, Finland) ,  Beatriz Lorenzo (University of Oulu, Finland)
Publisher:   John Wiley & Sons Inc
ISBN:  

9781119790297


Pages:   864
Publication Date:   17 March 2022
Format:   Hardback
Availability:   Out of stock   Availability explained
The supplier is temporarily out of stock of this item. It will be ordered for you on backorder and shipped when it becomes available.

Our Price $240.95 Quantity:  
Add to Cart

Share |

Artificial Intelligence and Quantum Computing for Advanced Wireless Networks


Add your own review!

Overview

ARTIFICIAL INTELLIGENCE AND QUANTUM COMPUTING FOR ADVANCED WIRELESS NETWORKS A comprehensive presentation of the implementation of artificial intelligence and quantum computing technology in large-scale communication networks Increasingly dense and flexible wireless networks require the use of artificial intelligence (AI) for planning network deployment, optimization, and dynamic control. Machine learning algorithms are now often used to predict traffic and network state in order to reserve resources for smooth communication with high reliability and low latency. In Artificial Intelligence and Quantum Computing for Advanced Wireless Networks, the authors deliver a practical and timely review of AI-based learning algorithms, with several case studies in both Python and R. The book discusses the game-theory-based learning algorithms used in decision making, along with various specific applications in wireless networks, like channel, network state, and traffic prediction. Additional chapters include Fundamentals of ML, Artificial Neural Networks (NN), Explainable and Graph NN, Learning Equilibria and Games, AI Algorithms in Networks, Fundamentals of Quantum Communications, Quantum Channel, Information Theory and Error Correction, Quantum Optimization Theory, and Quantum Internet, to name a few. The authors offer readers an intuitive and accessible path from basic topics on machine learning through advanced concepts and techniques in quantum networks. Readers will benefit from: A thorough introduction to the fundamentals of machine learning algorithms, including linear and logistic regression, decision trees, random forests, bagging, boosting, and support vector machines An exploration of artificial neural networks, including multilayer neural networks, training and backpropagation, FIR architecture spatial-temporal representations, quantum ML, quantum information theory, fundamentals of quantum internet, and more Discussions of explainable neural networks and XAI Examinations of graph neural networks, including learning algorithms and linear and nonlinear GNNs in both classical and quantum computing technology Perfect for network engineers, researchers, and graduate and masters students in computer science and electrical engineering, Artificial Intelligence and Quantum Computing for Advanced Wireless Networks is also an indispensable resource for IT support staff, along with policymakers and regulators who work in technology.

Full Product Details

Author:   Savo G. Glisic (University of Oulu, Finland) ,  Beatriz Lorenzo (University of Oulu, Finland)
Publisher:   John Wiley & Sons Inc
Imprint:   John Wiley & Sons Inc
Dimensions:   Width: 17.80cm , Height: 5.20cm , Length: 25.40cm
Weight:   1.758kg
ISBN:  

9781119790297


ISBN 10:   1119790298
Pages:   864
Publication Date:   17 March 2022
Audience:   Professional and scholarly ,  Professional & Vocational
Format:   Hardback
Publisher's Status:   Active
Availability:   Out of stock   Availability explained
The supplier is temporarily out of stock of this item. It will be ordered for you on backorder and shipped when it becomes available.

Table of Contents

Preface, xiii Part I Artificial Intelligence, 1 1 Introduction, 3 1.1 Motivation, 3 1.2 Book Structure, 5 2 Machine Learning Algorithms, 17 2.1 Fundamentals, 17 2.2 ML Algorithm Analysis, 37 3 Artificial Neural Networks, 55 3.1 Multi-layer Feedforward Neural Networks, 55 3.2 FIR Architecture, 60 3.3 Time Series Prediction, 68 3.4 Recurrent Neural Networks, 69 3.5 Cellular Neural Networks (CeNN), 81 3.6 Convolutional Neural Network (CoNN), 84 4 Explainable Neural Networks, 97 4.1 Explainability Methods, 99 4.2 Relevance Propagation in ANN, 103 4.3 Rule Extraction from LSTM Networks, 110 4.4 Accuracy and Interpretability, 112 5 Graph Neural Networks, 135 5.1 Concept of Graph Neural Network (GNN), 135 5.2 Categorization and Modeling of GNN, 144 5.3 Complexity of NN, 156 6 Learning Equilibria and Games, 179 6.1 Learning in Games, 179 6.2 Online Learning of Nash Equilibria in Congestion Games, 196 6.3 Minority Games, 202 6.4 Nash Q-Learning, 204 6.5 Routing Games, 211 6.6 Routing with Edge Priorities, 220 7 AI Algorithms in Networks, 227 7.1 Review of AI-Based Algorithms in Networks, 227 7.2 ML for Caching in Small Cell Networks, 237 7.3 Q-Learning-Based Joint Channel and Power Level Selection in Heterogeneous Cellular Networks, 243 7.4 ML for Self-Organizing Cellular Networks, 252 7.5 RL-Based Caching, 267 7.6 Big Data Analytics in Wireless Networks, 274 7.7 Graph Neural Networks, 279 7.8 DRL for Multioperator Network Slicing, 291 7.9 Deep Q-Learning for Latency-Limited Network Virtualization, 302 7.10 Multi-Armed Bandit Estimator (MBE), 317 7.11 Network Representation Learning, 327 Part II Quantum Computing, 361 8 Fundamentals of Quantum Communications, 363 8.1 Introduction, 363 8.2 Quantum Gates and Quantum Computing, 372 8.3 Quantum Fourier Transform (QFT), 386 9 Quantum Channel Information Theory, 397 9.1 Communication Over a Channel, 398 9.2 Quantum Information Theory, 401 9.3 Channel Description, 407 9.4 Channel Classical Capacities, 414 9.5 Channel Quantum Capacity, 431 9.6 Quantum Channel Examples, 437 10 Quantum Error Correction, 451 10.1 Stabilizer Codes, 458 10.2 Surface Code, 465 10.3 Fault-Tolerant Gates, 471 10.4 Theoretical Framework, 474 11 Quantum Search Algorithms, 499 11.1 Quantum Search Algorithms, 499 11.2 Physics of Quantum Algorithms, 510 12 Quantum Machine Learning, 543 12.1 QML Algorithms, 543 12.2 QNN Preliminaries, 547 12.3 Quantum Classifiers with ML: Near-Term Solutions, 550 12.4 Gradients of Parameterized Quantum Gates, 560 12.5 Classification with QNNs, 568 12.6 Quantum Decision Tree Classifier, 575 13 QC Optimization, 593 13.1 Hybrid Quantum-Classical Optimization Algorithms, 593 13.2 Convex Optimization in Quantum Information Theory, 601 13.3 Quantum Algorithms for Combinatorial Optimization Problems, 609 13.4 QC for Linear Systems of Equations, 614 13.5 Quantum Circuit, 625 13.6 Quantum Algorithm for Systems of Nonlinear Differential Equations, 628 14 Quantum Decision Theory, 637 14.1 Potential Enablers for Qc, 637 14.2 Quantum Game Theory (QGT), 641 14.3 Quantum Decision Theory (QDT), 665 14.4 Predictions in QDT, 676 15 Quantum Computing in Wireless Networks, 693 15.1 Quantum Satellite Networks, 693 15.2 QC Routing for Social Overlay Networks, 706 15.3 QKD Networks, 713 16 Quantum Network on Graph, 733 16.1 Optimal Routing in Quantum Networks, 733 16.2 Quantum Network on Symmetric Graph, 744 16.3 QWs, 747 16.4 Multidimensional QWs, 753 17 Quantum Internet, 773 17.1 System Model, 775 17.2 Quantum Network Protocol Stack, 789 References, 814 Index, 821

Reviews

Author Information

Savo G. Glisic is Research Professor at Worcester Polytechnic Institute, Massachusetts, USA. His research interests include network optimization theory, network topology control and graph theory, cognitive networks, game theory, artificial intelligence, and quantum computing technology. Beatriz Lorenzo is Assistant Professor in the Department of Electrical and Computer Engineering at the University of Massachusetts Amherst, USA. Her research interests include the areas of communication networks, wireless networks, and mobile computing.

Tab Content 6

Author Website:  

Customer Reviews

Recent Reviews

No review item found!

Add your own review!

Countries Available

All regions
Latest Reading Guide

Aorrng

Shopping Cart
Your cart is empty
Shopping cart
Mailing List