Chaccour / Saad / Kurisummoottil Thomas | Foundations of Semantic Communication Networks | Buch | 978-1-394-24788-2 | sack.de

Buch, Englisch, 416 Seiten, Format (B × H): 159 mm x 237 mm, Gewicht: 702 g

Chaccour / Saad / Kurisummoottil Thomas

Foundations of Semantic Communication Networks


1. Auflage 2024
ISBN: 978-1-394-24788-2
Verlag: John Wiley & Sons Inc

Buch, Englisch, 416 Seiten, Format (B × H): 159 mm x 237 mm, Gewicht: 702 g

ISBN: 978-1-394-24788-2
Verlag: John Wiley & Sons Inc


Comprehensive overview of the principles, theories, and techniques needed to build end-to-end semantic communication systems, with case studies included.

In this rapidly evolving landscape, the integration of connected intelligence applications highlights the pressing need for networks to gain intelligence in a non-siloed and ad hoc manner. The traditional incremental approach to network design is no longer sufficient to support the diverse and dynamic requirements of these emerging applications. This necessitates a paradigm shift towards more intelligent and adaptive network architectures.

From theory to application, Foundations of Semantic Communication Networks describes and provides a comprehensive understanding of everything needed to build end-to-end semantic communication systems. This book covers various interdisciplinary topics such as the mathematical foundations of semantic communications, information theoretical perspectives, joint-source channel coding, semantic-aware resource management strategies, interoperability under heterogeneous semantic communication users, advanced artificial intelligence (AI) and machine reasoning techniques for enabling connected intelligent applications, secure and privacy-preserving semantic communication systems, and the coexistence and interoperability of semantic, goal-oriented, and legacy systems.

The book examines unique features of end-to-end networking with semantic communications, including instilling reasoning behaviors in communication nodes, the role of the semantic plane in information filtering, control of communication and computing resources, transmit and receive signaling schemes, and connected intelligence device control. It emphasizes the importance of data semantics and age of information metrics. The book also discusses the profound impact of semantic communications on the telecom industry, highlighting changes in network performance, resource management, traffic, as well as spectral and energy efficiency.

Furthermore, the book provides insights into the mathematical constructs and AI theories for formulating semantic information, such as topology and category theory. It explores real-world applications, case studies, and future research directions as wireless technologies transition to 6G and beyond.

Written by four recognized experts in the field with a wealth of expertise from academia, industry, and research institutions, Foundations of Semantic Communication Networks addresses sample topics, including:

- Proposing new formulations using rigorous mathematical frameworks such as category theory and algebraic topology
- Focusing on real-world scenarios, addressing multiple access and networking challenges through collaborative frameworks for multi-modal transmissions, examining multiple access schemes to enhance transmission efficiency, and ensuring coexistence with legacy systems
- Enabling efficient large-scale systems for 6G and beyond wireless systems through AI-native air interfaces and semantic-aware resource allocation strategies
- Utilizing causality and neuro-symbolic artificial intelligence for minimalistic transmissions, and achieving generalizability and transferability across contexts and data distributions to develop high-fidelity semantic communication systems
- Examining security vulnerabilities associated with deep neural networks in semantic communications, and proposing encrypted, privacy-preserving semantic communication systems (ESCS) as a solution

Foundations of Semantic Communication Networks is an excellent forward-thinking resource on the subject for readers with a strong background in the subject matter, including graduate-level students, academics, practitioners, and industry researchers.

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Weitere Infos & Material


About the Editors xvii

List of Contributors xxi

Preface xxvii

Acknowledgment xxix

Acronyms xxxi

1 Introduction to Semantic Communications 1
Christina Chaccour, Christo Kurisummoottil Thomas, Walid Saad, and Merouane Debbah

1.1 From Information Streams to Streams of Understanding: The Rise of Semantic Communication Networks 1

1.1.1 How Does It Work? 3

1.1.2 Why Now? What Factors Contribute to Our Ongoing Reliance on Traditional Communications? 6

1.1.3 What Is NOT Semantic Communications? 7

1.1.3.1 Semantic Communications Is Not Data Compression 7

1.1.3.2 Semantic Communications Is Not Only an “AI for Wireless” Concept 9

1.1.3.3 Semantic Communications Is Not Only Goal-Oriented Communications 9

1.1.3.4 Semantic Communications Is Not Only Application-Aware Communications 10

1.2 Reimagining Future G Applications with Semantic Communications 11

1.2.1 Semantic Communication for Next-Generation XR 11

1.2.2 Digital Reality and Massive Twinning: Speaking the Same Language 13

1.2.3 Semantic Communication and Sustainable Networks: A Convergence for Efficiency 14

1.3 Structure and Path of the Book 16

Bibliography 17

Part I Fundamentals of Semantic Communications 19

2 Semantic Compression and Communication: Fundamentals and Methodologies 21
Emrecan Kutay and Aylin Yener

2.1 Introduction 21

2.1.1 Notation 23

2.2 Semantic Index Assignment 23

2.2.1 System Model 24

2.2.1.1 Minimization of Semantic Distortion 25

2.2.1.2 Graph Coloring Problem 26

2.2.1.3 Joint Graph Coloring and Index Assignment 27

2.3 The Rise of Machine Intelligence in Perception 29

2.4 Semantic Compression for Multimodal Sources 32

2.4.1 System Model 32

2.4.1.1 Semantic Quantization 33

2.4.1.2 Semantic Compression 34

2.4.1.3 Semantic Vector Quantized Autoencoder 36

2.4.2 Results 39

2.5 Conclusion 44

Bibliography 44

3 Toward a Theory of Semantic Information 49
Jean-Claude Belfiore and Daniel Bennequin

3.1 Introduction 49

3.2 Cohomological Nature of Information 50

3.3 Axioms for Information Spaces 52

3.4 Comparison with Other Propositions of Semantic Information Measures 54

3.5 Carnap and Bar-Hillel Languages 54

3.6 Shepard’s Experiment 57

Bibliography 59

4 Deep Joint Source and Channel Coding 61
Haotian Wu, Chenghong Bian, Yulin, Shao, and Deniz Gündüz

4.1 Introduction 61

4.2 DeepJSCC for MIMO Channels 62

4.2.1 System Model 62

4.2.1.1 Open-loop MIMO with CSIR 63

4.2.1.2 Closed-loop MIMO with CSIT 64

4.2.2 A DeepJSCC-MIMO Solution 65

4.2.2.1 Image-to-Sequence Transformation 66

4.2.2.2 Channel Heatmap Construction 66

4.2.2.3 ViT Encoding 67

4.2.2.4 ViT Decoding 67

4.2.2.5 Loss Function 68

4.2.3 Training and Evaluation 68

4.2.3.1 Open-loop MIMO System with CSIR 68

4.2.3.2 Closed-loop MIMO System with CSIT 71

4.3 DeepJSCC for Relay Channels 75

4.3.1 Cooperative Relay 75

4.3.1.1 System Model 75

4.3.1.2 DeepJSCC for Cooperative Relay 76

4.3.1.3 Numerical Experiments 79

4.3.2 Multihop Relay 81

4.3.2.1 System Model 82

4.3.2.2 Existing Methods 83

4.3.2.3 A Hybrid JSCC Solution 84

4.3.2.4 Numerical Experiments 88

4.4 DeepJSCC for Feedback Channels 91

4.4.1 System Model 91

4.4.2 A JSCCFormer-f Solution 93

4.4.2.1 ViT Encoder 93

4.4.2.2 ViT Decoder 95

4.4.3 Training and Evaluation 96

4.4.3.1 Transmission Performance 96

4.4.3.2 Impacts of Bandwidth Ratio and Block Number 97

4.4.3.3 Noisy Feedback Channel 100

4.4.3.4 Adaptability 100

4.4.3.5 High Resolution Dataset and Visualization 102

4.4.3.6 Variable Rate Transmission 102

4.5 Concluding Remarks 106

Bibliography 107

5 When Information Is a Function of Data – Some Information Theoretic Perspectives on Semantic Communications 111
Alexander Mariona, Homa Esfahanizadeh, Rafael Gregorio Lucas D’Oliveira, and Muriel Médard

5.1 The Central Limit Theorem 112

5.2 Quantitative Bounds 113

5.3 General Polynomials 115

5.4 Examples and Applications 119

5.4.1 The Computational Wiretap Channel 120

5.5 Further Generalizations 122

Bibliography 123

6 Interoperability and Coexistence of 6G Semantic, Goal-Oriented, and Legacy Systems 125
Emilio Calvanese Strinati, Mohamed Sana, Mattia Merluzzi, and Tomás Huttebraucker

6.1 Introduction 125

6.2 Interoperability Issue in Goal-oriented and Semantic Systems 126

6.2.1 Language in Multiuser Communication 128

6.2.2 A Measure of Semantic Mismatch 129

6.2.3 Semantic Channel Equalization 130

6.3 Coexistence of Semantic, Goal-Oriented, and Legacy Services in 6G 134

6.3.1 Goal-Oriented Resource Allocation 135

6.3.2 Goal-Driven Measures for Edge Inference 135

6.4 Conclusion 137

Acknowledgment 138

Bibliography 138

Part II Semantic Communications Networking 141

7 Optimization of Image Transmission in a Cooperative Semantic Communication Networks 143
Ye Hu and Mingzhe Chen

7.1 Introduction 143

7.1.1 Related Works 144

7.2 Representative Work 145

7.2.1 System Model 145

7.2.2 Semantic Information Extraction 146

7.2.3 Transmission Model 149

7.2.4 Image Semantic Similarity Model 150

7.2.5 Problem Formulation 151

7.3 Value-Decomposition-based Entropy-Maximized Multi-Agent RL Method 152

7.3.1 Components of VD-ERL Method 152

7.3.2 VD-ERL Algorithm for Semantic-Oriented Resource Allocation 155

7.3.3 Complexity and Convergence of the Introduced Algorithm 157

7.4 Simulation Results and Analysis 158

7.5 Conclusion 161

Bibliography 162

8 Multiple Access Design for Joint Semantic and Classical Communications 165
Xidong Mu and Yuanwei Liu

8.1 Introduction 165

8.2 Heterogeneous Semantic and Bit Multiuser Network 167

8.2.1 Multiple Access for the Heterogeneous Semantic and Bit Multiuser Network 169

8.2.2 Interplay Between Semantic Communications and NOMA 169

8.3 NOMA-Enabled Heterogeneous Semantic and Bit Multiuser Communications 170

8.3.1 Semantic Rate: A New Performance Metric 170

8.3.2 Semi-NOMA: A Unified Multiple Access Scheme 171

8.3.3 Fundamental Limit: Semantic-Versus-Bit Rate Region 173

8.4 Semantic Communications-Enhanced NOMA 175

8.4.1 Early-Late Rate Disparity Issue in NOMA 175

8.4.2 An Opportunistic Semantic and Bit Communication Approach for Noma 177

8.4.3 Numerical Case Studies 177

8.5 Concluding Remarks and Future Research 179

Bibliography 179

9 Contextual Reasoning-based Semantics-Native Communication 181
Hyowoon Seo, Yoon Huh, Heekang Song, Wan Choi, and Mehdi Bennis

9.1 Semantics-Native Communication 181

9.1.1 System Model 182

9.1.1.1 Information-Theoretic Model Description 183

9.1.1.2 Motivation from Triangle of Meaning Model 183

9.2 Contextual Reasoning for Semantics-Native Communication 184

9.2.1 Motivation from Referential Game 185

9.2.2 Single-Sided Contextual Reasoning 185

9.2.3 Double-Sided Contextual Reasoning 188

9.2.4 Multi-round Contextual Reasoning 189

9.3 Context Synchronization for Semantics-Native Communication 192

9.3.1 Bayesian Inverse Contextual Reasoning 193

9.3.2 Inverse Linearized Contextual Reasoning 194

9.3.2.1 Linearizing Contextual Reasoning 195

9.3.2.2 Invertible Linearized Contextual Reasoning 196

9.4 Information Bottleneck Contextual Reasoning 197

9.4.1 Information Bottleneck Method 197

9.4.2 Implementing Information Bottleneck with Contextual Reasoning 198

9.5 Conclusion 198

Bibliography 199

10 Interoperable Semantic Communication 201
Jinhyuk Choi, Hyelin Nam, Jihong Park, Seung-Woo Ko, Jinho Choi, Mehdi Bennis, and Seong-Lyun Kim

10.1 Pitfalls of Federated Learning for Semantic Alignment 201

10.2 Split Learning for Semantic Alignment 203

10.3 In-Context Learning for Semantic Alignment 207

10.4 Conclusion and Future Directions 211

Bibliography 212

Part III Machine Reasoning for Ai-native Semantic Communication Networks 215

11 Causal Reasoning Foundations of Semantic Communication Systems 217
Christo Kurisummoottil Thomas, Christina Chaccour, Walid Saad, and Merouane Debbah

11.1 Introduction 217

11.2 Causality Primer 219

11.3 Causal Semantic Communications 222

11.3.1 System Model 222

11.3.1.1 How to Pose the Proper Interventions and Counterfactuals via Queries? 224

11.3.2 Emergent Language Model 226

11.3.3 Semantic Information Measure 227

11.3.4 Signaling Game Model and Generalized Nash Equilibrium Problem 230

11.3.5 Characterization of the Generalized Local NE 232

11.3.6 Analysis of the Signaling Game Equilibria for Emergent Language 233

11.3.7 Average Semantic Representation Length for Classical and Emergent Language Based ESC 235

11.4 Numerical Results 236

11.4.1 Illustrative Example for NeSy AI’s Potential in Wireless Versus Classical AI Based Wireless 236

11.5 Conclusion 239

Bibliography 240

12 Reinforcement Learning-Based Unicast and Broadcast Wireless Semantic Communications 241
Zhilin Lu, Rongpeng Li, Ekram Hossain, Zhifeng Zhao, and Honggang Zhang

12.1 Introduction 241

12.2 System Model And Problem Formulation 245

12.2.1 Unicast Model 245

12.2.2 Broadcast Model 246

12.2.3 Problem Formulation 248

12.3 SemanticBC-SCAL


Walid Saad is a Professor with the Department of Electrical and Computer Engineering, Virginia Tech, USA, where he leads the Network Science, Wireless, and Security (NEWS) Laboratory.
Christina Chaccour is a Network Solutions Manager at Ericsson Inc., USA, where she spearheads product solutions for 5G-Advanced, 6G, and AI integration across North America.
Christo Kurisummoottil Thomas is a Post-Doctoral Fellow with the Department of Electrical and Computer Engineering, Virginia Tech, USA.
Merouane Debbah is a Professor at Khalifa University of Science and Technology, UAE, and founding Director of the KU 6G Research Center.



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