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E-raamat: Big Data of Complex Networks

Edited by , Edited by (Queen's University Belfast, UK), Edited by (Medical University Graz, AUSTRIA), Edited by
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Big Data of Complex Networks presents and explains the methods from the study of big data that can be used in analysing massive structural data sets, including both very large networks and sets of graphs. As well as applying statistical analysis techniques like sampling and bootstrapping in an interdisciplinary manner to produce novel techniques for analyzing massive amounts of data, this book also explores the possibilities offered by the special aspects such as computer memory in investigating large sets of complex networks.

Intended for computer scientists, statisticians and mathematicians interested in the big data and networks, Big Data of Complex Networks is also a valuable tool for researchers in the fields of visualization, data analysis, computer vision and bioinformatics.

Key features:











Provides a complete discussion of both the hardware and software used to organize big data





Describes a wide range of useful applications for managing big data and resultant data sets





Maintains a firm focus on massive data and large networks





Unveils innovative techniques to help readers handle big data

Matthias Dehmer received his PhD in computer science from the Darmstadt University of Technology, Germany. Currently, he is Professor at UMIT The Health and Life Sciences University, Austria, and the Universität der Bundeswehr München. His research interests are in graph theory, data science, complex networks, complexity, statistics and information theory.

Frank Emmert-Streib received his PhD in theoretical physics from the University of Bremen, and is currently Associate professor at Tampere University of Technology, Finland. His research interests are in the field of computational biology, machine learning and network medicine.

Stefan Pickl holds a PhD in mathematics from the Darmstadt University of Technology, and is currently a Professor at Bundeswehr Universität München. His research interests are in operations research, systems biology, graph theory and discrete optimization.

Andreas Holzinger received his PhD in cognitive science from Graz University and his habilitation (second PhD) in computer science from Graz University of Technology. He is head of the Holzinger Group HCI-KDD at the Medical University Graz and Visiting Professor for Machine Learning in Health Informatics Vienna University of Technology.
Preface vii
Editors ix
Contributors xi
1 Network Analyses of Biomedical and Genomic Big Data
1(24)
Mayur Sarangdhar
Ranga Chandra Gudivada
Rasu B. Shrestha
Yunguan Wang
Anil G. Jegga
2 Distributed or Network-Based Big Data?
25(14)
Bo Hu
Klaus Arto
3 Big Data Text Automation on Small Machines
39(40)
Ming Jia
Yiqi Bai
Jingwen Wang
Wenjing Yang
Hao Zhang
Jie Wang
4 Big Data Visualization for Large Complex Networks
79(42)
Lei Shi
Yifan Hu
Qi Liao
5 Finding Small Dominating Sets in Large-Scale Networks
121(26)
Liang Zhao
6 Techniques for the Management and Querying of Big Data in Large-Scale Communication Networks
147(20)
Yacine Djemaiel
Noureddine Boudriga
7 Large Random Matrices and Big Data Analytics
167(44)
Robert Caiming Qiu
8 Big Data of Complex Networks and Data Protection Law: An Introduction to an Area of Mutual Conflict
211(14)
Florent Thouvenin
9 Structure, Function, and Development of Large-Scale Complex Neural Networks
225(22)
Joaquin J. Torres
10 ScaleGraph: A Billion-Scale Graph Analytics Library
247(18)
Toyotaro Suzumura
11 Challenges of Computational Network Analysis with R
265(28)
Shiwen Sun
Shuai Ding
Chengyi Xia
Zengqiang Chen
12 Visualizing Life in a Graph Stream
293(20)
James Abello
David DeSimone
Steffen Hadlak
Hans-Jorg Schulz
Mika Sumida
Index 313
Matthias Dehmer studied mathematics at the University of Siegen (Germany) and received his PhD in computer science from the Technical University of Darmstadt (Germany). Afterwards, he was a research fellow at Vienna BioCenter (Austria), Vienna University of Technology, and University of Coimbra (Coimbra). He obtained his habilitation in applied discrete mathematics from the Vienna University of Technology. Currently, he is Professor at UMIT The Health and Life Sciences University (Austria) and also holds a position at the Universit¨at der Bundeswehr M¨unchen. His research interests are in applied mathematics, bioinformatics, systems biology, graph theory, complexity, and information theory. He has written over 175 publications in his research areas.









Frank Emmert-Streib studied physics at the University of Siegen, Germany, gaining his PhD in theoretical physics from the University of Bremen. He was a postdoctoral research associate at the Stowers Institute for Medical Research, Kansas City, USA, and a senior fellow at the University of Washington, Seattle, USA. Currently, he is a lecturer/assistant professor at the Queens University Belfast, UK, at the Center for Cancer Research and Cell Biology, heading the Computational Biology and Machine Learning Lab. His research interests are in the field of computational biology, machine learning, and biostatistics in the development and application of methods from statistics and machine learning for the analysis of high-throughput data from genomics and genetics experiments.