In the era of digital economy with highly-connected world, the ability to comprehend social network computing has become an indispensable skill. This book serves as a vital guide for academics and professionals engaged in research within this rapidly expanding field.

The book is organized into three parts, each dedicated to different facets of social network computing. The journey commences with an exploration of foundational principles, encompassing triadic closure, strong and weak ties, network homophily, and positive and negative balance. This lays the groundwork for an in-depth examination of fundamental theories governing social networks. Subsequently, the focus shifts to the laws dictating social networks, elucidating phenomena like the small world effect, power law distribution, community detection, diffusion processes, game theory dynamics, and hypernetworks, also including multiplex networks, multi-mode networks and temporal networks. The final section of the book centers on the practical aspects of social network analysis, delving into topics such as link prediction, influence evaluation, dynamic analysis, random experiments, modeling and simulation, and representation learning. This provides a comprehensive exploration of the applicability of social network analysis in real-world scenarios.

This book seamlessly integrates theory with practice by incorporating popular social network computing software, including igraph, Gephi, Ucinet, and Netlogo. By mastering the computational thinking methods presented in this book, readers will deepen their understanding of social network computing and acquire the skills to effectively apply it in various real-world contexts.

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Subsequently, the focus shifts to the laws dictating social networks, elucidating phenomena like the small world effect, power law distribution, community detection, diffusion processes, game theory dynamics, and hypernetworks, also including multiplex networks, multi-mode networks and temporal networks.
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Chapter 1 Introduction to Social Network Computing.- Chapter 2 Visualization of Social Networks.- Chapter 3 Triadic Closure in Social Networks.- Chapter 4 Strong and Weak Relationships in Social Networks.- Chapter 5 Homophily in Social Networks.- Chapter 6 Positive and Negative Balance in Social Networks.- Chapter 7 The Small World in Social Networks.- Chapter 8 Power Laws in Social Networks.- Chapter 9 Communities in Social Networks.- Chapter 10 Communication in Social Networks.- Chapter 11 Games in Social Networks.- Chapter 12 Networks in Social Networks.- Chapter 13 Link Prediction for Social Networks.- Chapter 14 Evaluation of the Influence of Social Networks.- Chapter 15 Dynamic Analysis of Social Networks.- Chapter 16 Randomized Experiments in Social Networks.- Chapter 17 Modeling and Simulation of Social Networks.- Chapter 18 Representation Learning for Social Networks.

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In the era of digital economy with highly-connected world, the ability to comprehend social network computing has become an indispensable skill. This book serves as a vital guide for academics and professionals engaged in research within this rapidly expanding field.

The book is organized into three parts, each dedicated to different facets of social network computing. The journey commences with an exploration of foundational principles, encompassing triadic closure, strong and weak ties, network homophily, and positive and negative balance. This lays the groundwork for an in-depth examination of fundamental theories governing social networks. Subsequently, the focus shifts to the laws dictating social networks, elucidating phenomena like the small world effect, power law distribution, community detection, diffusion processes, game theory dynamics, and hypernetworks, also including multiplex networks, multi-mode networks and temporal networks. The final section of the book centers on the practical aspects of social network analysis, delving into topics such as link prediction, influence evaluation, dynamic analysis, random experiments, modeling and simulation, and representation learning. This provides a comprehensive exploration of the applicability of social network analysis in real-world scenarios.

This book seamlessly integrates theory with practice by incorporating popular social network computing software, including igraph, Gephi, Ucinet, and Netlogo. By mastering the computational thinking methods presented in this book, readers will deepen their understanding of social network computing and acquire the skills to effectively apply it in various real-world contexts.

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Presents a comprehensive exploration of fundamental principles and advanced theories of social network computing Provides practical approaches to guide readers how to apply social network computing in real-world scenarios Written in a clear and understandable language, making complex concepts easy to grasp for readers at all levels
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Produktdetaljer

ISBN
9789819740833
Publisert
2024-11-02
Utgiver
Vendor
Springer Nature
Høyde
235 mm
Bredde
155 mm
Aldersnivå
Research, P, 06
Språk
Product language
Engelsk
Format
Product format
Innbundet
Orginaltittel
社会网络计算

Forfatter

Biographical note

Professor Jiang Wu is a scholar specializing in digital social-technical system, holding the position of Associate Dean at Wuhan University’s School of Information Management. He also leads the university’s E-commerce and Information System discipline development, and directs the university’s Center for E-commerce Research and Development and holds the position of Secretary-General at the Hubei E-commerce Association. His contributions include over 150 research articles published in prestigious journals and conferences, as well as three academic monographs until now.  A PH.D graduate of Huazhong University of Science and Technology, Jiang Wu also studied at Carnegie Mellon University as a joint doctoral student. His research interests include data intelligence, social network, smart healthcare, digital village, and so on.