Network data are produced automatically by everyday interactions - social networks, power grids, and links between data sets are a few examples. Such data capture social and economic behavior in a form that can be analyzed using powerful computational tools. This book is a guide to both basic and advanced techniques and algorithms for extracting useful information from network data. The content is organized around 'tasks', grouping the algorithms needed to gather specific types of information and thus answer specific types of questions. Examples include similarity between nodes in a network, prestige or centrality of individual nodes, and dense regions or communities in a network. Algorithms are derived in detail and summarized in pseudo-code. The book is intended primarily for computer scientists, engineers, statisticians and physicists, but it is also accessible to network scientists based in the social sciences. MATLAB®/Octave code illustrating some of the algorithms will be available at: http://www.cambridge.org/9781107125773.
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Product Details
Weight: 1150g
Dimensions: 184 x 261mm
Publication Date: 12 Jul 2016
Publisher: Cambridge University Press
Publication City/Country: United Kingdom
Language: English
ISBN13: 9781107125773
About François FoussMarco SaerensMasashi Shimbo
François Fouss received his PhD from the Université catholique de Louvain Belgium where he is now Professor of Computer Science. His research and teaching interests include artificial intelligence data mining machine learning pattern recognition and natural language processing with a focus on graph-based techniques. Marco Saerens received his PhD from the Université Libre de Bruxelles Belgium. He is now Professor of Computer Science at the Université catholique de Louvain Belgium. His research and teaching interests include artificial intelligence data mining machine learning pattern recognition and natural language processing with a focus on graph-based techniques. Masashi Shimbo received his PhD from Kyoto University Japan. He is now Associate Professor at the Graduate School of Information Science Nara Institute of Science and Technology Japan. His research and teaching interests include artificial intelligence data mining machine learning pattern recognition and natural language processing with a focus on graph-based techniques.