Social Network Analysis and Mining Applications in Healthcare and Anomaly Detection

Social Network Analysis and Mining Applications in Healthcare and Anomaly Detection

EnglishHardback
Springer, Berlin
EAN: 9783031752032
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Detailed information

This book is an excellent source of knowledge for readers interested in the latest developments in social network analysis and mining, particularly with applications in healthcare and anomaly detection. It covers topics such as sensitivity to noise in features, enhancing fraud detection in financial systems, measuring the echo-chamber phenomenon, detecting comorbidity, and evaluating the effectiveness of mitigative and preventative actions on viral spread in small communities using agent-based stochastic simulations. Additionally, it discusses predicting behavior, measuring and identifying influence, analyzing the impact of COVID-19 on various social aspects, and using UNet for handling various skin conditions.

This book helps readers develop their own perspectives on adapting social network concepts to various applications. It also demonstrates how to use various machine learning techniques for tackling challenges in social network analysis and mining.

EAN 9783031752032
ISBN 3031752031
Binding Hardback
Publisher Springer, Berlin
Publication date December 21, 2024
Pages 336
Language English
Dimensions 235 x 155
Country Switzerland
Illustrations VI, 336 p. 131 illus., 121 illus. in color.
Editors Alhajj, Sleiman; Day Min-Yuh; Kaya, Mehmet; Sailunaz, Kashfia
Edition 2024 ed.
Series Lecture Notes in Social Networks