Computational Social Network Analysis Trends, Tools and Research Advances

Topics and Features: Provides an overview social network tools, and explores methods for discovering key players in social networks, designing self-organizing search systems, and clustering blog sites Surveys techniques for exploratory analysis and text mining of social networks, approaches to track...

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Bibliographic Details
Other Authors: Abraham, Ajith (Editor), Hassanien, Aboul-Ella (Editor), Snášel, Vaclav (Editor)
Format: eBook
Language:English
Published: London Springer London 2010, 2010
Edition:1st ed. 2010
Series:Computer Communications and Networks
Subjects:
Online Access:
Collection: Springer eBooks 2005- - Collection details see MPG.ReNa
Table of Contents:
  • Social Network Mining Tools
  • An Overview of Methods for Virtual Social Networks Analysis
  • Discovering Sets of Key Players in Social Networks
  • Toward Self-Organizing Search Systems
  • DISSECT: Data-Intensive Socially Similar Evolving Community Tracker
  • Clustering of Blog Sites Using Collective Wisdom
  • Exploratory Analysis of the Social Network of Researchers in Inductive Logic Programming
  • Information Flow in Systems of Interacting Agents as a Function of Local and Global Topological Features
  • Social Network Evolution
  • Network Evolution: Theory and Mechanisms
  • Vmap-Layout, a Layout Algorithm for Drawing Scientograms
  • Nature-Inspired Dissemination of Information in P2P Networks
  • Analysis and Visualization of Relations in eLearning
  • Interdisciplinary Matchmaking: Choosing Collaborators by Skill, Acquaintance and Trust
  • Web Communities Defined by Web Page Content
  • Extended Generalized Blockmodeling for Compound Communities and External Actors
  • Analyzing Collaborations Through Content-Based Social Networks
  • Social Network Applications
  • IA-Regional-Radio – Social Network for Radio Recommendation
  • On the Use of Social Networks in Web Services: Application to the Discovery Stage
  • Friends with Faces: How Social Networks Can Enhance Face Recognition and Vice Versa