Dickison / Magnani / Rossi | Multilayer Social Networks | Buch | 978-1-107-43875-0 | sack.de

Buch, Englisch, 208 Seiten, Format (B × H): 151 mm x 226 mm, Gewicht: 318 g

Dickison / Magnani / Rossi

Multilayer Social Networks


Erscheinungsjahr 2016
ISBN: 978-1-107-43875-0
Verlag: Cambridge University Press

Buch, Englisch, 208 Seiten, Format (B × H): 151 mm x 226 mm, Gewicht: 318 g

ISBN: 978-1-107-43875-0
Verlag: Cambridge University Press


Multilayer networks, in particular multilayer social networks, where users belong to and interact on different networks at the same time, are an active research area in social network analysis, computer science, and physics. These networks have traditionally been studied within these separate research communities, leading to the development of several independent models and methods to deal with the same set of problems. This book unifies and consolidates existing practical and theoretical knowledge on multilayer networks including data collection and analysis, modeling, and mining of multilayer social network systems, the evolution of interconnected social networks, and dynamic processes such as information spreading. A single real dataset is used to illustrate the concepts presented throughout the book, demonstrating both the practical utility and the potential shortcomings of the various methods. Researchers from all areas of network analysis will learn new aspects and future directions of this emerging field.

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Weitere Infos & Material


1. Moving out of flatland; Part I. Models and Measures: 2. Representing multilayer social networks; 3. Measuring multilayer social networks; Part II. Mining Multilayer Networks: 4. Data collection and preprocessing; 5. Visualizing multilayer networks; 6. Community detection; 7. Edge patterns; Part III. Dynamical Processes: 8. Formation of multilayer social networks; 9. Information and behavior diffusion; Part IV. Conclusion: 10. Future directions.


Rossi, Luca
Luca Rossi is Assistant Professor in the Communication and Culture research group of the IT University of Copenhagen. His research connects traditional sociological approaches with computational approaches. He has presented his work at many international conferences, including: IR, SBP, ASONAM, SunBelt, ICWSM. He has teaching experience at both undergraduate and graduate levels, and has successfully attracted funding on complex social network analysis from PRIN and FIRB schemes (Italian Ministry for education).

Dickison, Mark E
Mark Dickison is a Data Science Manager at Capital One, where he attempts to put his knowledge of complex systems and technical skills at the forefront of solving business problems while still finding time to stay current with theory. He has been a post-doctoral fellow at Pennsylvania State in their USP program, which supports the US Defense Threat Reduction Agency, one of the first organizations to focus on multiple network models. His research interests fall within multidisciplinary network modeling, including network formation, and epidemiological and opinion spreading, as well as data mining and machine learning.

Magnani, Matteo
Matteo Magnani is Senior Lecturer in database systems and data mining at Uppsala University, and has previously held positions at CNR, Italy, at the University of Bologna and at Aarhus University. He authored one of the first research papers on multilayer social networks (best paper award at the ASONAM conference), and organized multiple conference tracks (at SunBelt, NetSci) as well as a journal special issue on this topic.



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