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  • 1
    Online Resource
    Online Resource
    New York, NY : Springer US | Cham : Springer International Publishing AG
    ISBN: 9781441962874 , 1441962875
    Language: English
    Pages: 1 Online-Ressource (X, 216 Seiten) , 68 illus.
    Edition: 1st ed. 2010
    Series Statement: Annals of Information Systems 12
    Parallel Title: Erscheint auch als Data Mining for Social Network Data
    DDC: 330.0151
    Keywords: Business mathematics ; Business information services ; Pattern recognition systems ; Social sciences—Data processing ; Business Mathematics ; IT in Business ; Automated Pattern Recognition ; Computer Application in Social and Behavioral Sciences
    Library Location Call Number Volume/Issue/Year Availability
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  • 2
    Online Resource
    Online Resource
    Boston, MA : Springer Science+Business Media, LLC
    ISBN: 9781441962874
    Language: English
    Pages: Online-Ressource , v.: digital
    Edition: Online-Ausg. Springer eBook Collection. Business and Economics Electronic reproduction; Available via World Wide Web
    Series Statement: Annals of Information Systems 12
    DDC: 005.74
    Keywords: Economics ; Optical pattern recognition ; Social sciences Data processing ; Management information systems
    Abstract: Driven by counter-terrorism efforts, marketing analysis and an explosion in online social networking in recent years, data mining has moved to the forefront of information science. This proposed Special Issue on Data Mining for Social Network Data will present a broad range of recent studies in social networking analysis. It will focus on emerging trends and needs in discovery and analysis of communities, solitary and social activities, activities in open for a and commercial sites as well. It will also look at network modeling, infrastructure construction, dynamic growth and evolution pattern discovery using machine learning approaches and multi-agent based simulations. Editors are three rising stars in world of data mining, knowledge discovery, social network analysis, and information infrastructures, and are anchored by Springer author/editor Hsinchun Chen (Terrorism Informatics, Medical Informatics, Digital Government), who is one of the most prominent intelligence analysis and data mining experts in the world.
    Description / Table of Contents: Contents; Contributors; 1 Social Network Data Mining: Research Questions, Techniques, and Applications; 1.1 Introduction; 1.2 Network Mining: Research Questions; 1.2.1 Static Structure Mining; 1.2.2 Dynamic Structure Mining; 1.3 Network Mining: Techniques and Applications; 1.4 Conclusions and Future Directions; References; 2 Automatic Expansion of a Social Network UsingSentiment Analysis; 2.1 Introduction; 2.2 An Algorithm for Expanding a Signed Social Network of Attitudes; 2.2.1 Signed Social Network; 2.2.2 Quotation Network; 2.2.3 Automatic Expansion of the Signed Social Network
    Description / Table of Contents: 2.3 Filtering the Results Using Output Network Structural Properties2.4 Data, Experiments, and Evaluation; 2.4.1 The News Data; 2.4.2 The Social Networks Used as Input; 2.4.3 Evaluation Criteria; 2.4.4 Experiments and Evaluation; 2.5 Related Work; 2.6 Conclusions and Future Work; References; 3 Automatic Mapping of Social Networks of Actors from Text Corpora: Time Series Analysis; 3.1 Introduction; 3.2 Methods; 3.2.1 Link Coding with Proximities not ''Bag of Words''; 3.2.2 Optimal Window Size for Actor Social Networks; 3.2.3 Actor Co-occurrence Segmentation Software
    Description / Table of Contents: 3.2.4 Network Centrality Measures3.2.5 Time Segmentation; 3.2.6 Creating the String Replacement and Include Lists; 3.2.7 Post-Processing of Link Data for Centrality Measures; 3.2.8 Time Series Statistical Analysis; 3.2.9 Combining Visualization with Statistical Centrality of Actors; 3.3 Results; 3.3.1 Hypotheses Tests; 3.4 Discussion; References; 4 A Social Network-Based Recommender System (SNRS); 4.1 Introduction; 4.2 Background; 4.3 A Social Network-Based Recommender System; 4.3.1 Immediate Friend Inference; 4.3.1.1 User Preference; 4.3.1.2 Item Acceptance
    Description / Table of Contents: 4.3.1.3 Influence from Immediate Friends4.3.2 Distant Friend Inference; 4.4 Data set; 4.4.1 Review Correlations of Immediate Friends; 4.4.2 Rating Correlations of Immediate Friends; 4.5 Experiments; 4.5.1 Comparison Methods; 4.5.2 Prediction Accuracy And Coverage; 4.5.3 Data Sparsity; 4.5.4 Cold-Start; 4.5.5 Role of Distant Friends; 4.6 Semantic Filtering of Social Networks; 4.7 Related Work; 4.8 Conclusions; References; 5 Network Analysis of US Air Transportation Network; 5.1 Introduction; 5.2 Network Analysis Foundation; 5.2.1 Network Foundation; 5.2.2 Network Properties
    Description / Table of Contents: 5.2.2.1 Average Shortest Path (Distance)5.2.2.2 Degree; 5.2.2.3 Betweeness; 5.2.2.4 Clustering Coefficient; 5.3 The US Air Transportation Network Analysis; 5.3.1 The US Air Transportation Network Data; 5.3.2 Network Topological Properties; 5.3.3 9/11 Impact on the Aviation Industry; 5.4 Network Dynamics; 5.4.1 Network Modeling; 5.4.2 Network Aging Effect; 5.5 Conclusion and Discussion; References; 6 Identifying High-Status Nodes in Knowledge Networks; 6.1 Introduction; 6.2 Literature Review; 6.2.1 Social Network Measures; 6.2.2 Innovation and Knowledge Networks
    Description / Table of Contents: 6.3 Research Design and Testbed
    Note: Includes bibliographical references , Electronic reproduction; Available via World Wide Web
    URL: Volltext  (lizenzpflichtig)
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