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Social Network Analysis Prof. Hendrik Speck University of Applied Sciences Kaiserslautern 5 th  Karlsruhe Symposium for Knowledge Management in Theory and Praxis October 11, 2007 Karlsruhe, Germany
1. Social Networks 2. Social Network Analysis 3. Social Network Visualization 4. Visualization Examples 5. Conclusion / Discussion Introduction
Social Networks
Social Networks Definition A social network is a social structure, community, or society made of nodes which are generally accounts, individuals or organizations. It indicates the ways in which they are connected through various social familiarities, affiliations and/or relationships ranging from casual acquaintance to close familial bonds.
Visualization Social Networks
Profiles and Platforms Social  Bookmarking Social  Video Sharing Social Photo  Sharing Social  Encyclopedia Social  Community Social Music  Community Social Networks
Map of Online Commmunities. Spring 2007. Social Networks Source: XKCD.  Map of Online Communities.  Available:  http://imgs.xkcd.com/comics/online_communities.png
Upload audio/video you created Publish your own Web pages 0 % Read customer ratings/reviews 50 % Read blogs Participate in discussion boards Use social networking sites Watch peer-generated video Post ratings/reviews Comment on blogs Tag Web pages or other content Use RSS feeds Listen to podcasts Publish or maintain a blog 25 % Source: Li, Charlene.  Social Technographics.  Forrester Research. 2007.  Available:  http://www.forrester.com/Research/Document/Excerpt/0,7211,42057,00.html Web 2.0 and Monthly Usage. United States. 2006. Social Networks
Use widgets Create my own online video 0 % Use social networking sites 50 % Web 2.0 and Weekly Usage. Age 12-21. United States. 2006. Read a blog Publish your own blog Contribute to a discussion board Use a wiki Listen to podcasts View a video on a video blog site Reviews products or services Read RSS feeds Publish your own web pages Use a tagging services 25 % Source: Li, Charlene.  Social Technographics.  Forrester Research. 2007.  Available:  http://www.forrester.com/Research/Document/Excerpt/0,7211,42057,00.html Social Networks
0 % Critics 50 % 52 % 19% Collectors Joiners Spectators Inactives 33 % 19 % 15 % Web 2.0: Consumer Groups by Activity. United States. 2006. Creators 13% Publish Web page or blog / Upload video to videoportals Comment on blogs / Post ratings and reviews Use RSS / Tag Web pages Use social networking sites Read blogs / Watch videos / Listen to podcasts None of these activities Source: Li, Charlene.  Social Technographics.  Forrester Research. 2007.  Available:  http://www.forrester.com/Research/Document/Excerpt/0,7211,42057,00.html Social Networks
50,000,000 Evolution of Dance. User.  Youtube. 33,000,000 Avril Lavigne. Girlfriend.  Youtube. 25,000,000 Pokemon Theme Music Video. User.  Youtube. 23,000,000 SNL. Dick in a Box.  Youtube. 22,000,000 Desperate Housewives.  ABC.  USA. TV.   18,000,000 Quick Change Artists. NBC.  Youtube. 18,000,000 CSI: Miami.  CBS.  USA. TV. 17,000,000  Gansta Happy Feet Remix. User.  Myspace. 15,500,000 Lost. Second Season Premiere.  ABC.  USA. TV. Social Networks Audience Comparison. Web 2.0, Social Networks, and Media.   June 2007.
15,000,000 Free Hugs Campaign. User.  Youtube . 14,000,000 Yomiuri Shimbun.  Japan. Newspaper 13,000,000 Beyonce. Irreplaceable.  Youtube.   12,000,000 The Asahi Shimbun.  Japan. Newspaper. 12,000,000  300 Trailer Video. Warner Bros.   Myspace. 10,000,000 Kiwi! Animation. User.   Youtube. 8,000,000 Robot Dance. User.   Youtube. 6,800,000 Otters holding hands. User.  Youtube. 6,000,000 New Numa. User.   Youtube.   Social Networks Audience Comparison. Web 2.0, Social Networks, and Media.   June 2007.
5,600,000 Hips Don't Lie. Shakira.  Youtube . 5,600,000 Mainichi Shimbun.  Japan. Newspaper.  5,000,000  Fast and the Furious. User.  Myspace. 3,900,000 Bild.  Germany. Newspaper.   3,100,000 Midget Dancing. User.  Myspace. 2,400,000 The Sun.  United Kingdom. Newspaper.  2,300,000 USA Today.  USA. Newspaper.  2,100,000 The Wall Street Journal.  USA. Newspaper. 1,100,000 New York Times.  USA. Newspaper Social Networks Audience Comparison. Web 2.0, Social Networks, and Media.   June 2007.
1,000,000 Der Spiegel.  Germany. Magazine. 820,000 Los Angeles Times.  USA. Newspaper. 720,000 New York Post.  USA. Newspaper. 700,000 Washington Post.  USA. Newspaper. 570,000 Chicago Tribune.  USA. Newspaper. 500,000 Houston Chronicle.  USA. Newspaper. Social Networks Audience Comparison. Web 2.0, Social Networks, and Media.   June 2007.
Social Networks Marketshare. February 2007. Rank  Name  Domain  Market Share 1. MySpace  www.myspace.com  80.74% 2.   Facebook  www.facebook.com  10.32% 3.   Bebo  www.bebo.com  1.18% 4.   BlackPlanet.com  www.blackplanet.com  0.88% 5.   Xanga  www.xanga.com  0.87% 6.   iMeem  www.imeem.com  0.73% 7.   Yahoo! 360  360.yahoo.com  0.72% 8.   Classmates  www.classmates.com  0.72% 9.   hi5  www.hi5.com  0.69% 10. Tagged  www.tagged.com  0.67% 11.  LiveJournal  www.livejournal.com  0.49% 12.  Gaiaonline.com  www.gaiaonline.com  0.48% 13.  Friendster  www.friendster.com  0.34% 14.  Orkut  www.orkut.com  0.26% 15. Live Spaces  spaces.live.com  0.18% Source: Hitwise.  Social Networking Visits Increase 11.5 Percent From January To February . March 2007.  Available:  http://www.hitwise.com/press-center/hitwiseHS2004/socialnetworkingmarch07.php Social Networks
Top 10 Social Networking Sites. April 2006. U.S., Home and Work. Site Apr-05 UA Apr-06 Growth MySpace 8,210 38,359 367% Blogger 10,301 18,508 80% Classmates Online 11,672 12,865 10% YouTube N/A 12,505 N/A MSN Groups 12,352 10,570  -14% AOL Hometown 11,236 9,590  -15% Yahoo! Groups 8,262  9,165  11% MSN Spaces  1,857  7,165  286% Six Apart TypePad  5,065  6,711  32% Xanga.com  5,202  6,631  27% Source: Nielsen/NetRatings.  Top 10 Social Networking Sites . April 2006.  Available:  http://www.nielsen-netratings.com/pr/pr_060511.pdf Social Networks
The market share of Internet visits to the top 20 social networking websites grew by 11.5 percent from January to February 2007, to account for 6.5 percent of all Internet visits in February 2007. “   ” Growth Rates and Potential Source: Nielsen/NetRatings.  Top 10 Social Networking Sites . April 2006.  Available:  http://www.nielsen-netratings.com/pr/pr_060511.pdf Social Networks
“ The younger generations are consuming information in a different way. …They may not necessarily be going into bookshops. They are spending time on Google, MySpace, Facebook, author Web sites, Yahoo and MSN.”  “   ” Brian Murray, Group President of HarperCollins.  Source: Rich, Motoko. “HarperCollins Steps Up Its Presence on the Internet.” New York Times. August 3, 2006, Available:  http://www.nytimes.com/2006/08/03/books/03book.html   Demographic Change Social Networks
Social Network Analysis
Social Network Analysis Social Network of 09/11  Source: Ron Hutcheson and James Kuhnhenn. “A Wide Surveillance Net.”  The Philadelphia Inquirer.  May 2006, Available:  http://www.orgnet.com/divided2.html
History. Social Network Analysis and Sociology. 1700 Sociology Auguste François Xavier Comte 1800 Modern Sociology/Socioeconomics Max Weber/ Ferdinand Tönnies  Emile Durkheim/ Karl Marx 1900 Formal Sociology Georg Simmel/ Leopold von Wiese 1950 Sociometry Wolfgang Köhler /Jacob Levy Moreno 1990 Social Network Analysis Albert-Laszlo Barabasi, Howard Rheingold, Yochai Benkler  Social Network Analysis
Sixth Degree. Dr. Stanley Milgram 1933 – 1984, an American social psycho-logist at Yale University, Harvard University and the City University of New York conducted in 1967 the small-world experiment that is the basis of the six degrees of separation concept.  Milgram sent several packages to random people in the United States, asking them to forward the package, by hand, to someone specific or someone who is more likely to know the target. The average path length for the received packages was around 5.5 or six, resulting in widespread acceptance for the term six degrees of separation. Social Networks
Sixth Degree. Social Networks
150 - Dunbars Number Dunbar's number, 150, describes the theoretical maximum of a genuine social network. The number is based on the limits of human abilities to identify members, relationships and expres-sions – history, sociology, evolutionary psychology and anthro-pology trace the number back to the the sense of community in various hunter-gatherer societies.  Social Networks
150 - Dunbars Number Approximate numbers include  the estimated size of a Neolithic farming village (150), the splitting point of Hutterite settlements (150), the upper bound on the number of academics in a discipline's sub-specialization (200), the basic unit size of professional armies in Roman antiquity and in modern times since the 16th century – a company – or Maniple, a tactical unit of the Roman legion, usually includes 75-200 soldiers.  Social Networks
Types of Data and Analysis Research Method Survey Research Surveys and Interviews Ethographic Research Observations, Field Studies Documentary Research Logfiles, Texts and Archives Social Networks Type of Data  Attribute Ideational Relational Type of Analysis Variable Typological  Network   } Source: Scott, John.  Social Network Analysis.  Sage Publications. 2000. Paperback, ISBN: 0761963391 }
Betweenness  Centrality Closeness  Centrality Degree  Flow Betweenness Centrality  Centrality Eigenvector  Centralization  Clustering Coefficient  Cohesion  Contagion  Attributes and Quantities. Social Network Analysis. Density  Integration  Path Length  Radiality  Reach  Structural Equivalence  Structural Hole  Islands Social Networks
1.   Account ID 2.   User Name 3.   First Name 4.   Last Name 5.   Academic Title 6.   Academic Degree 7.   Sex/Gender 8.   Birth/Maiden Name 9.   Relationship Status User Identifiers and Attributes. Social Network Analysis. 10.   Sexual Preferences 11.   Birthday 12.   Sign of the Zodiac 13.   Hometown 14.   Country 15.   Time Zone 16.   Political Views 17.   Religious Views Social Networks
18. Address  19. City  20. Zip 21. Country 22. Website  23. Email 24. Mobile Phone  25. Land Phone 26. Fax Contact Information. Social Network Analysis. 27. Skype ID 28. ICQ ID 29. AIM ID 30. Yahoo ID 31. WindowsLive ID 32. GoogleTalk ID 33.   Gadu-Gadu ID Social Networks
34. Status 35. Employer 36. Position/Title 37. Company Website 38. Address 39. City 40. Zip Code 41. State 42. Country Work. Social Network Analysis. 43. Industry 44. Description 45. Wants 46. Haves 47. Time Period From 48. Time Period To 49. Business Organization Social Networks
50. College/University 51. Class Year 52. Attended for 53. Degree 54. College/Graduate School  55. Concentration 56. Second Concentration 57. Third Concentration 58. Degree Education. Social Network Analysis. 59. High School 60. Class Year Social Networks
61. Activities 62. Interests 63. Hobbies 64. Favorite Music  65. Favorite TV Shows 66. Favorite Movies 67. Favorite Books 68. Favorite Quotes 69. About Me Personal Information and Interests. Social Network Analysis. 70. Pictures 71. Uploaded Picture(s) 72. Picture Tags 73. Audio 74. Uploaded Audio 75. Audio Tags 76. Video 77. Uploaded Video(s) 78. Video Tags Social Networks
79. Location 80. Contacts 81. # of Contacts 82. Messages 83. # of Messages 84. Events 85. # of Events 86. Guestbook Entries 87. # of Guestbook Entries Connection and Usage Information. Social Network Analysis. 88. Online Status 89. Login Time 90. Usage 91. IP Address 92. Network 93. Operating System 94. Browser 95. Screen Size 96. Language Social Networks
Social Network Visualization
Social Network Analysis. Social Networks
Inflow. Social Network Analysis. 2003. Social Networks Source: Valdis Krebs and David Krackhardt.  Inflow/   Kite Network.  2003, Available:  http://www.orgnet.com/sna.html
Degrees/Centrality. Social Network Analyis.  Social Networks
Betweeness. Social Network Analysis.  Social Networks
Closeness. Social Network Analysis.  Social Networks
Male vs. Female. Social Networks
Young vs. Old/Slim vs. Overweight/ Weak vs. Strong  Social Networks
Relationships. Social Networks
Weight/ Direction/ Intensity of Relationships Social Networks
Visualization Examples
Source: Ross Mayfield.  Ryze Blog Tribe. Friends Network.  December 2002, Available:  http://radio.weblogs.com/0114726/2003/01/02.html#a176   Social Network Analysis Ryze Blog. Tribe. 2002. In 2002 Valdis Krebs, Pete Kaminski, and Ross Mayfield mapped the blogspace of Ryze, friendship networks and blogrolls of tribe members.  The data of the Blog Tribe, a business network, includes 1,108 nodes of approximately 100 members captured within a month.  A webcrawler was used to capture the links between individual members pages and InFlow 3.0 by Valdis was used to map and visualized the social network in its entirety.
Source: Ross Mayfield. Ryze Blog Tribe. Friends Network. December 2002, Available:  http://radio.weblogs.com/0114726/2003/01/02.html#a176
Source: Heer, Jeffrey.  Exploring Enron. Visualizing ANLP Results.  University of California. 2004, Available:  http://jheer.org/enron/v1/  and Keila, P. S. and D. B. Skillicorn.  Detecting unusual email communication.  IBM Centre for Advanced Studies Conference  archive. Proceedings of the 2005 Conference of the Centre for Advanced Studies on Collaborative research. Toranto, Ontario, Canada, Pages 117 – 125, ISSN:1705-7361, Available:  http://www.cs.queensu.ca/TechReports/Reports/2005-498.pdf   Social Network Analysis Enron, a bankrupt energy company based in Houston employed around 21,000 people and was one of the biggest electricity, natural gas, and communications companies, with claimed revenues of $101 billion in 2000. Fortune magazine named Enron "America's Most Innovative Company" for six consecutive years. In 2001 Enron became the symbol of willful corporate and institutionalized fraud and corruption. Its European operations filed for bankruptcy on November 30, 2001, and it sought Chapter 11 protection in the U.S. two days later, on December 2.  Enron. 2004.
Social Network Analysis Enron. 2004.
Social Network Analysis Enron. 2004.
Social Network Analysis Enron. 2004.
Social Network Analysis The graph provides a network map of the purchase patterns of political books based on data provided by major web book retailers after the 2006 mid-term elections. Starting with political books included in the New York Times Bestseller List a network of related books is created based on purchase patterns ("Customers who bought this item also bought...“), and visualized according to relationships, network neighborhood, and populace.  The resulting graph underlines a divided readership, visualized by two distinct clusters with strong internal affiliations. Extreme positions are located at both sides, the middle ground is only represented by three individual books, eventually a reflection of the electoral debates.  Purchase Patterns of Political Books. Orgnet. 2004. Source: Valdis Krebs.  Divided We Stand... Still.  Available:  http://www.orgnet.com/divided2.html
Social Network Analysis Purchase Patterns of Political Books. Orgnet. 2004. Source: Valdis Krebs.  Divided We Stand... Still.  Available:  http://www.orgnet.com/divided2.html
Source: Goetz, Kristina. “New teen study could help stop spread of sexually transmitted disease.”  Columbia News Service.  March 15, 2005, Available:  http://jscms.jrn.columbia.edu/cns/2005-03-15/goetz-teensex   Social Network Analysis Sociologists, mapping the romantic and sexual relationships of an American high school for 18 months revealed that teens, unlike adults, don’t have core groups that are highly sexually active. Instead, teens are linked to many other teens through former sexual connections.  The findings can influence social policy and help stop the spread of sexually transmitted diseases among high school students because number of partners a teen has is less important than how he is connected to others in a kind of romantic chain. Jefferson High School. United States. 2005
Source: Goetz, Kristina. “New teen study could help stop spread of sexually transmitted disease.”  Columbia News Service.  March 15, 2005, Available:  http://jscms.jrn.columbia.edu/cns/2005-03-15/goetz-teensex   Social Network Analysis Using data from the National Longitudinal Study of Adolescent Health, researchers analyzed the interviews and the structures of romantic and sexual relations   of more than 800 students at an unidentified high school in the Midwest that they dubbed Jefferson High.  Each circle represents a student and lines connecting students represent romantic relations occurring within the 6 months preceding the interviews. Numbers under the figure count the number of times that pattern was observed. Jefferson High School. United States. 2005
Social Network Analysis Jefferson High School. United States. 2005 Source: Goetz, Kristina. “New teen study could help stop spread of sexually transmitted disease.”  Columbia News Service.  March 15, 2005, Available:  http://jscms.jrn.columbia.edu/cns/2005-03-15/goetz-teensex
Business Network Analysis. 2004. Source: Pascal Jaubert, Frank Langhans, and Prof. Hendrik Speck.  Vinex. Business Network Analysis.  University of Applied Sciences Kaiserslautern. 2004, Available:  http://sourceforge.net/projects/vinex/   Social Network Analysis Vinex (virtual network explorer) reduces the complexity of social networks by visualizing their structures. Based on data collected by a web crawler from virtual communities, vinex offers the possibility to explore relationships between social networks, groups, and individual community members as well as interests, coordinates, profiles, addresses, email addresses, and themes.
 
 
 
 
Studianalyse. 2006/2007. StudiAnalyse, a free software project, aims to analyze and visualize a social community network similar to Facebook. The network, launched in October 2005, is enjoying enormous popularity amongst students in Germany (currently serving more than 1,500,000 users.) Social Network Examples Source: Anna Lewandowski, Jennifer Gliem, Christoph Gerstle, Florian Moritz, and Prof. Hendrik Speck.  Studianalyse.  University of Applied Sciences Kaiserslautern. 2006/2007, Available:  http://www.studianalyse.de.vu/
 
 
 
 
 
 
 
 
 
Source: Hagen Fritsch.  StudiVZ. Inoffizielle Statistikpräsentation.  December 2006, Available:  http://studivz.irgendwo.org/   Statistics. StudiVZ. December 2006. Social Network Analysis
Source: Hagen Fritsch.  StudiVZ. Inoffizielle Statistikpräsentation.  December 2006, Available:  http://studivz.irgendwo.org/   Statistics. StudiVZ. December 2006. Social Network Analysis
Source: Hagen Fritsch.  StudiVZ. Inoffizielle Statistikpräsentation.  December 2006, Available:  http://studivz.irgendwo.org/   Statistics. StudiVZ. December 2006. Social Network Analysis
Source: Hagen Fritsch.  StudiVZ. Inoffizielle Statistikpräsentation.  December 2006, Available:  http://studivz.irgendwo.org/   Statistics. StudiVZ. December 2006. Social Network Analysis
Source: Hagen Fritsch.  StudiVZ. Inoffizielle Statistikpräsentation.  December 2006, Available:  http://studivz.irgendwo.org/   Social Network Analysis
Source: Hagen Fritsch.  StudiVZ. Inoffizielle Statistikpräsentation.  December 2006, Available:  http://studivz.irgendwo.org/   Statistics. StudiVZ. December 2006. Social Network Analysis
Source: Hagen Fritsch.  StudiVZ. Inoffizielle Statistikpräsentation.  December 2006, Available:  http://studivz.irgendwo.org/   Statistics. StudiVZ. December 2006. Social Network Analysis
Source: Hagen Fritsch.  StudiVZ. Inoffizielle Statistikpräsentation.  December 2006, Available:  http://studivz.irgendwo.org/   Statistics. StudiVZ. December 2006. Social Network Analysis
Social Network Analysis Explores and visualizes related search engine results in Google’s database. The results are clustered automatically in categories, additional filters can be used to  show, hide or expand individual nodes Nodes are represented by graphical favIcons, URL’s and/or site names; different sizes, shapes, and colors are used to represent categories, relationships, relative importance. The resulting graph provides instant feedback and can be modified and rearranged.  Google Browser. Touchgraph. 2007 Source: Touchgraph.  Google Browser.  Available:  http://www.touchgraph.com/TGGoogleBrowser.html
Social Network Analysis European Graduate School. Touchgraph. 2007. Source: Touchgraph.  Google Browser.  Available:  http://www.touchgraph.com/TGGoogleBrowser.html
Social Network Analysis Massachusetts Institute of Technology. Touchgraph. 2007. Source: Touchgraph.  Google Browser.  Available:  http://www.touchgraph.com/TGGoogleBrowser.html
Social Network Analysis Playboy Magazine. Touchgraph. 2007. Source: Touchgraph.  Google Browser.  Available:  http://www.touchgraph.com/TGGoogleBrowser.html
Source: Crossway.  Co-Occurrences of Names in the New Testament.  January 2007, Available:  http://services.alphaworks.ibm.com/manyeyes/view/SMGTJEsOtha6GEktsYeKE2-   Social Network Analysis Visualizes the occurrence of biblical names in the same chapter of the New Testament. The visualization will connect two people who appear in the text near each other, even though that does not necessarily mean they have a relationship. An ontology, semantic knowledge base or genealogy dataset would improve the visualization.  Biblical Figures in New Testament. 2007.
 
Source: W Bradford Paley.  Alice in Wonderland TextArc.  Information Esthetics. 2002,  Available:  http://informationesthetics.org/node/25   Social Network Analysis A TextArc visualization of Lewis Carrol’s classic story Alice’s Adventures in Wonderland; the visualization follows a chronological, clockwise pattern; frequently occurring terms are represented by brighter colors, characters mentioned throughout the book are located in the middle, brighter words around the outside suggest that this term or character is episodic in nature. Alice in Wonderland. 2002.
 
 
Source: On, Josh and Amy Balkin.  They Rule.  Available:  http://www.theyrule.net/   Social Network Analysis Visualizes the relationships between boards and directors of the biggest U.S. companies. Users can browse through interlocking directories, run searches on the boards and companies, save maps of connections complete with annotations and email links to these maps to others.  They Rule. 2004.
 
 
 
Source: Michael Kabdebo, Marc Rohe, Florian Bielsky, and Prof. Hendrik Speck.  Infrastat. Business Network Analyzer.  University of Applied Sciences Kaiserslautern. 2007, Available:  http://sourceforge.net/projects/infrastat/   Social Network Analysis Infrastat visualizes the relationships between commercial and political interests in Germany, providing a detailed picture of the Deutschland AG. The framework relies on data provided by commercial content providers and visualizes the data within a modular visualization framework. The framework is currently expanded to include political affiliations, campaign contributions, user annotations and references. Infrastat. Economic Network Analyser. 2007.
 
 
 
Source: On, Josh and Amy Balkin.  Exxon Secrets.  2005, Available:  http://www.exxonsecrets.org/   Social Network Analysis Exxon Secrets, developed for Greenpeace, is exposing Exxon-Mobil's funding of climate change skeptics. The application provides a visual interface for the corporate funded anti-environmental movement. Some corporations, think tanks, conservative institutions and their spokespeople, call global warming a hoax. This project pretends to show how ExxonMobil is quietly funding these organizations by exposing the perfidious network of connections between ExxonMobil and the organizations and people that benefit from their funding. Exxon Secrets. 2005.
 
 
 
 
 
 
Social Network Analysis SpamCan is a web based software, which attracts spam so the harvester und spammer can be identified und localizied. Spam emails were separated in 10 catagories with help from the Bayesian filters. The programm relies on the Open Source SpamJAM framework in conjunction with new features and components. spamCAN. Spam Analyzer. 2006. Source: Ralf Wagner, Katharina Gerhardt, Yvonne Schmittler, and Prof. Hendrik Speck.  SpamCan. Spam Analyzer.  University of Applied Sciences Kaiserslautern. 2006, Available:  http://sourceforge.net/projects/spamcanproject/
Social Network Analysis spamCAN. Spam Analyzer. 2006. Source: Ralf Wagner, Katharina Gerhardt, Yvonne Schmittler, and Prof. Hendrik Speck.  SpamCan. Spam Analyzer.  University of Applied Sciences Kaiserslautern. 2006, Available:  http://sourceforge.net/projects/spamcanproject/
Social Network Analysis spamCAN. Spam Analyzer. 2006. Source: Ralf Wagner, Katharina Gerhardt, Yvonne Schmittler, and Prof. Hendrik Speck.  SpamCan. Spam Analyzer.  University of Applied Sciences Kaiserslautern. 2006, Available:  http://sourceforge.net/projects/spamcanproject/
Social Network Analysis spamCAN. Spam Analyzer. 2006. Source: Ralf Wagner, Katharina Gerhardt, Yvonne Schmittler, and Prof. Hendrik Speck.  SpamCan. Spam Analyzer.  University of Applied Sciences Kaiserslautern. 2006, Available:  http://sourceforge.net/projects/spamcanproject/
Social Network Analysis spamCAN. Spam Analyzer. 2006. Source: Ralf Wagner, Katharina Gerhardt, Yvonne Schmittler, and Prof. Hendrik Speck.  SpamCan. Spam Analyzer.  University of Applied Sciences Kaiserslautern. 2006, Available:  http://sourceforge.net/projects/spamcanproject/
PeerLo is a plugin for the bittorrent-client "Azureus". The plugin visualizes the bittorrent peers of torrents downloaded. The plugin collects the IP-adresses of the swarm and visualizes them on a map. Peerlow also provides some statistics of the peers location and their downloading/uploading behavior.  Social Network Analysis PeerLo. Bittorrent Network Analyzer. 2006. Source: Andreas Augustin, Christian Becker, and Prof. Hendrik Speck.  PeerLo. Bittorrent Network Analyzer.  University of Applied Sciences Kaiserslautern. 2006, Available:  http://sourceforge.net/projects/peerlo
Social Network Analysis PeerLo. Bittorrent Network Analyzer. 2006. Source: Andreas Augustin, Christian Becker, and Prof. Hendrik Speck.  PeerLo. Bittorrent Network Analyzer.  University of Applied Sciences Kaiserslautern. 2006, Available:  http://sourceforge.net/projects/peerlo
Social Network Analysis PeerLo. Bittorrent Network Analyzer. 2006. Source: Andreas Augustin, Christian Becker, and Prof. Hendrik Speck.  PeerLo. Bittorrent Network Analyzer.  University of Applied Sciences Kaiserslautern. 2006, Available:  http://sourceforge.net/projects/peerlo
Social Network Analysis PeerLo. Bittorrent Network Analyzer. 2006. Source: Andreas Augustin, Christian Becker, and Prof. Hendrik Speck.  PeerLo. Bittorrent Network Analyzer.  University of Applied Sciences Kaiserslautern. 2006, Available:  http://sourceforge.net/projects/peerlo
PeerLo. Bittorrent Network Analyzer. 2006. Source: Andreas Augustin, Christian Becker, and Prof. Hendrik Speck.  PeerLo. Bittorrent Network Analyzer.  University of Applied Sciences Kaiserslautern. 2006, Available:  http://sourceforge.net/projects/peerlo   Social Network Analysis
B.A.S.S (band analysis and suggestion system) is a software application which analyzes, visualizes and calculates music usage based on the social network of www.MySpace.com., or to be more correct, on the social network of musicians within MySpace.  B.A.S.S. MySpace Music Analysis. 2006. Social Network Analysis Source: Thomas Klein, Patrick Mai, Fabian Winkhardt, and Prof. Hendrik Speck.  BASS. MySpace Music Analysis.  University of Applied Sciences Kaiserslautern. 2006, Available:  http://sourceforge.net/projects/bass
Social Network Analysis B.A.S.S. MySpace Music Analysis. 2006. Source: Thomas Klein, Patrick Mai, Fabian Winkhardt, and Prof. Hendrik Speck.  BASS. MySpace Music Analysis.  University of Applied Sciences Kaiserslautern. 2006, Available:  http://sourceforge.net/projects/bass
Social Network Analysis B.A.S.S. MySpace Music Analysis. 2006. Source: Thomas Klein, Patrick Mai, Fabian Winkhardt, and Prof. Hendrik Speck.  BASS. MySpace Music Analysis.  University of Applied Sciences Kaiserslautern. 2006, Available:  http://sourceforge.net/projects/bass
Social Network Analysis B.A.S.S. MySpace Music Analysis. 2006. Source: Thomas Klein, Patrick Mai, Fabian Winkhardt, and Prof. Hendrik Speck.  BASS. MySpace Music Analysis.  University of Applied Sciences Kaiserslautern. 2006, Available:  http://sourceforge.net/projects/bass
Visualizes the relationships between scientific areas, publications and connecting scientific paradigms of roughly 800,000 published papers categorized by 776 different scientific paradigms. Paradigms are represented by pale circular nodes based on the number of citations, links describe the relationship between paradigms and papers, node proximity and link intensity serve as indicators for the similarity between paradigms. General scientific areas are labeled, flowing labels include word lists unique to individual paradigms.  Relationships Among Scientific Paradigms. 2007. Social Network Analysis Source: Boyack, Kevin , Dick Klavans, and W. Bradford Paley. "Relationships Among Scientific Paradigms."  Seed.  March 7, 2007, Available:  http://seedmagazine.com/news/2007/03/scientific_method_relationship.php
Relationships Among Scientific Paradigms. 2007. Social Network Analysis Source: Boyack, Kevin , Dick Klavans, and W. Bradford Paley. "Relationships Among Scientific Paradigms."  Seed.  March 7, 2007, Available:  http://seedmagazine.com/news/2007/03/scientific_method_relationship.php
Relationships Among Scientific Paradigms. 2007. Social Network Analysis Source: Boyack, Kevin , Dick Klavans, and W. Bradford Paley. "Relationships Among Scientific Paradigms."  Seed.  March 7, 2007, Available:  http://seedmagazine.com/news/2007/03/scientific_method_relationship.php
Relationships Among Scientific Paradigms. 2007. Social Network Analysis Source: Boyack, Kevin , Dick Klavans, and W. Bradford Paley. "Relationships Among Scientific Paradigms."  Seed.  March 7, 2007, Available:  http://seedmagazine.com/news/2007/03/scientific_method_relationship.php
Die Lokalisten. Social Network. 2007. Social Network Analysis Source: Heinen, Felix. Datenvisualisierung eines sozialen Netzwerks. Die Lokalisten.  University of Applied Sciences Nürnberg.  Diploma Thesis. 2007, Available:  http://www.felixheinen.de/020.html   Visualizes the interpersonal connections within Die Lokalisten, a German social network focusing on the “Who” aspect, especially profile information, network usage, membership status, age, educational background, family status, gender and other demographic data. A second visualization focuses on the “Where” – including but not limited to geographic location, membership distribution, local clusters and exchange processes
Die Lokalisten. Social Network. 2007. Social Network Analysis Source: Heinen, Felix. Datenvisualisierung eines sozialen Netzwerks. Die Lokalisten.  University of Applied Sciences Nürnberg.  Diploma Thesis. 2007, Available:  http://www.felixheinen.de/020.html
Die Lokalisten. Social Network. 2007. Social Network Analysis Source: Heinen, Felix. Datenvisualisierung eines sozialen Netzwerks. Die Lokalisten.  University of Applied Sciences Nürnberg.  Diploma Thesis. 2007, Available:  http://www.felixheinen.de/020.html
Discussion/Conclusion
Thank you for your attention. I will gladly answer your questions. Prof. Hendrik Speck  contact (at) hendrikspeck [dot] com University of Applied Sciences  Kaiserslautern Information Architecture Lab Amerikastrasse  1 66482  Zweibrücken Tel:  +49 6332 914 360 Skype: hendrikspeck Conclusion Contact Information
License Information. You are free to share (to copy, distribute and transmit the work) and to remix (to adapt the work) under the following conditions: Attribution. (You must attribute the work in the manner specified by the author or licensor but not in any way that suggests that they endorse you or your use of the work) Share Alike. (If you alter, transform, or build upon this work, you may distribute the resulting work only under the same, similar or a compatible license.) Conclusion Attribution-ShareAlike 3.0 Unported. License Information.

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Prof. Hendrik Speck - Social Network Analysis

  • 1. Social Network Analysis Prof. Hendrik Speck University of Applied Sciences Kaiserslautern 5 th Karlsruhe Symposium for Knowledge Management in Theory and Praxis October 11, 2007 Karlsruhe, Germany
  • 2. 1. Social Networks 2. Social Network Analysis 3. Social Network Visualization 4. Visualization Examples 5. Conclusion / Discussion Introduction
  • 4. Social Networks Definition A social network is a social structure, community, or society made of nodes which are generally accounts, individuals or organizations. It indicates the ways in which they are connected through various social familiarities, affiliations and/or relationships ranging from casual acquaintance to close familial bonds.
  • 6. Profiles and Platforms Social Bookmarking Social Video Sharing Social Photo Sharing Social Encyclopedia Social Community Social Music Community Social Networks
  • 7. Map of Online Commmunities. Spring 2007. Social Networks Source: XKCD. Map of Online Communities. Available: http://imgs.xkcd.com/comics/online_communities.png
  • 8. Upload audio/video you created Publish your own Web pages 0 % Read customer ratings/reviews 50 % Read blogs Participate in discussion boards Use social networking sites Watch peer-generated video Post ratings/reviews Comment on blogs Tag Web pages or other content Use RSS feeds Listen to podcasts Publish or maintain a blog 25 % Source: Li, Charlene. Social Technographics. Forrester Research. 2007. Available: http://www.forrester.com/Research/Document/Excerpt/0,7211,42057,00.html Web 2.0 and Monthly Usage. United States. 2006. Social Networks
  • 9. Use widgets Create my own online video 0 % Use social networking sites 50 % Web 2.0 and Weekly Usage. Age 12-21. United States. 2006. Read a blog Publish your own blog Contribute to a discussion board Use a wiki Listen to podcasts View a video on a video blog site Reviews products or services Read RSS feeds Publish your own web pages Use a tagging services 25 % Source: Li, Charlene. Social Technographics. Forrester Research. 2007. Available: http://www.forrester.com/Research/Document/Excerpt/0,7211,42057,00.html Social Networks
  • 10. 0 % Critics 50 % 52 % 19% Collectors Joiners Spectators Inactives 33 % 19 % 15 % Web 2.0: Consumer Groups by Activity. United States. 2006. Creators 13% Publish Web page or blog / Upload video to videoportals Comment on blogs / Post ratings and reviews Use RSS / Tag Web pages Use social networking sites Read blogs / Watch videos / Listen to podcasts None of these activities Source: Li, Charlene. Social Technographics. Forrester Research. 2007. Available: http://www.forrester.com/Research/Document/Excerpt/0,7211,42057,00.html Social Networks
  • 11. 50,000,000 Evolution of Dance. User. Youtube. 33,000,000 Avril Lavigne. Girlfriend. Youtube. 25,000,000 Pokemon Theme Music Video. User. Youtube. 23,000,000 SNL. Dick in a Box. Youtube. 22,000,000 Desperate Housewives. ABC. USA. TV. 18,000,000 Quick Change Artists. NBC. Youtube. 18,000,000 CSI: Miami. CBS. USA. TV. 17,000,000 Gansta Happy Feet Remix. User. Myspace. 15,500,000 Lost. Second Season Premiere. ABC. USA. TV. Social Networks Audience Comparison. Web 2.0, Social Networks, and Media. June 2007.
  • 12. 15,000,000 Free Hugs Campaign. User. Youtube . 14,000,000 Yomiuri Shimbun. Japan. Newspaper 13,000,000 Beyonce. Irreplaceable. Youtube. 12,000,000 The Asahi Shimbun. Japan. Newspaper. 12,000,000 300 Trailer Video. Warner Bros. Myspace. 10,000,000 Kiwi! Animation. User. Youtube. 8,000,000 Robot Dance. User. Youtube. 6,800,000 Otters holding hands. User. Youtube. 6,000,000 New Numa. User. Youtube. Social Networks Audience Comparison. Web 2.0, Social Networks, and Media. June 2007.
  • 13. 5,600,000 Hips Don't Lie. Shakira. Youtube . 5,600,000 Mainichi Shimbun. Japan. Newspaper. 5,000,000 Fast and the Furious. User. Myspace. 3,900,000 Bild. Germany. Newspaper. 3,100,000 Midget Dancing. User. Myspace. 2,400,000 The Sun. United Kingdom. Newspaper. 2,300,000 USA Today. USA. Newspaper. 2,100,000 The Wall Street Journal. USA. Newspaper. 1,100,000 New York Times. USA. Newspaper Social Networks Audience Comparison. Web 2.0, Social Networks, and Media. June 2007.
  • 14. 1,000,000 Der Spiegel. Germany. Magazine. 820,000 Los Angeles Times. USA. Newspaper. 720,000 New York Post. USA. Newspaper. 700,000 Washington Post. USA. Newspaper. 570,000 Chicago Tribune. USA. Newspaper. 500,000 Houston Chronicle. USA. Newspaper. Social Networks Audience Comparison. Web 2.0, Social Networks, and Media. June 2007.
  • 15. Social Networks Marketshare. February 2007. Rank Name Domain Market Share 1. MySpace www.myspace.com 80.74% 2. Facebook www.facebook.com 10.32% 3. Bebo www.bebo.com 1.18% 4. BlackPlanet.com www.blackplanet.com 0.88% 5. Xanga www.xanga.com 0.87% 6. iMeem www.imeem.com 0.73% 7. Yahoo! 360 360.yahoo.com 0.72% 8. Classmates www.classmates.com 0.72% 9. hi5 www.hi5.com 0.69% 10. Tagged www.tagged.com 0.67% 11. LiveJournal www.livejournal.com 0.49% 12. Gaiaonline.com www.gaiaonline.com 0.48% 13. Friendster www.friendster.com 0.34% 14. Orkut www.orkut.com 0.26% 15. Live Spaces spaces.live.com 0.18% Source: Hitwise. Social Networking Visits Increase 11.5 Percent From January To February . March 2007. Available: http://www.hitwise.com/press-center/hitwiseHS2004/socialnetworkingmarch07.php Social Networks
  • 16. Top 10 Social Networking Sites. April 2006. U.S., Home and Work. Site Apr-05 UA Apr-06 Growth MySpace 8,210 38,359 367% Blogger 10,301 18,508 80% Classmates Online 11,672 12,865 10% YouTube N/A 12,505 N/A MSN Groups 12,352 10,570 -14% AOL Hometown 11,236 9,590 -15% Yahoo! Groups 8,262 9,165 11% MSN Spaces 1,857 7,165 286% Six Apart TypePad 5,065 6,711 32% Xanga.com 5,202 6,631 27% Source: Nielsen/NetRatings. Top 10 Social Networking Sites . April 2006. Available: http://www.nielsen-netratings.com/pr/pr_060511.pdf Social Networks
  • 17. The market share of Internet visits to the top 20 social networking websites grew by 11.5 percent from January to February 2007, to account for 6.5 percent of all Internet visits in February 2007. “ ” Growth Rates and Potential Source: Nielsen/NetRatings. Top 10 Social Networking Sites . April 2006. Available: http://www.nielsen-netratings.com/pr/pr_060511.pdf Social Networks
  • 18. “ The younger generations are consuming information in a different way. …They may not necessarily be going into bookshops. They are spending time on Google, MySpace, Facebook, author Web sites, Yahoo and MSN.” “ ” Brian Murray, Group President of HarperCollins. Source: Rich, Motoko. “HarperCollins Steps Up Its Presence on the Internet.” New York Times. August 3, 2006, Available: http://www.nytimes.com/2006/08/03/books/03book.html Demographic Change Social Networks
  • 20. Social Network Analysis Social Network of 09/11 Source: Ron Hutcheson and James Kuhnhenn. “A Wide Surveillance Net.” The Philadelphia Inquirer. May 2006, Available: http://www.orgnet.com/divided2.html
  • 21. History. Social Network Analysis and Sociology. 1700 Sociology Auguste François Xavier Comte 1800 Modern Sociology/Socioeconomics Max Weber/ Ferdinand Tönnies Emile Durkheim/ Karl Marx 1900 Formal Sociology Georg Simmel/ Leopold von Wiese 1950 Sociometry Wolfgang Köhler /Jacob Levy Moreno 1990 Social Network Analysis Albert-Laszlo Barabasi, Howard Rheingold, Yochai Benkler Social Network Analysis
  • 22. Sixth Degree. Dr. Stanley Milgram 1933 – 1984, an American social psycho-logist at Yale University, Harvard University and the City University of New York conducted in 1967 the small-world experiment that is the basis of the six degrees of separation concept. Milgram sent several packages to random people in the United States, asking them to forward the package, by hand, to someone specific or someone who is more likely to know the target. The average path length for the received packages was around 5.5 or six, resulting in widespread acceptance for the term six degrees of separation. Social Networks
  • 24. 150 - Dunbars Number Dunbar's number, 150, describes the theoretical maximum of a genuine social network. The number is based on the limits of human abilities to identify members, relationships and expres-sions – history, sociology, evolutionary psychology and anthro-pology trace the number back to the the sense of community in various hunter-gatherer societies. Social Networks
  • 25. 150 - Dunbars Number Approximate numbers include the estimated size of a Neolithic farming village (150), the splitting point of Hutterite settlements (150), the upper bound on the number of academics in a discipline's sub-specialization (200), the basic unit size of professional armies in Roman antiquity and in modern times since the 16th century – a company – or Maniple, a tactical unit of the Roman legion, usually includes 75-200 soldiers. Social Networks
  • 26. Types of Data and Analysis Research Method Survey Research Surveys and Interviews Ethographic Research Observations, Field Studies Documentary Research Logfiles, Texts and Archives Social Networks Type of Data Attribute Ideational Relational Type of Analysis Variable Typological Network } Source: Scott, John. Social Network Analysis. Sage Publications. 2000. Paperback, ISBN: 0761963391 }
  • 27. Betweenness Centrality Closeness Centrality Degree Flow Betweenness Centrality Centrality Eigenvector Centralization Clustering Coefficient Cohesion Contagion Attributes and Quantities. Social Network Analysis. Density Integration Path Length Radiality Reach Structural Equivalence Structural Hole Islands Social Networks
  • 28. 1. Account ID 2. User Name 3. First Name 4. Last Name 5. Academic Title 6. Academic Degree 7. Sex/Gender 8. Birth/Maiden Name 9. Relationship Status User Identifiers and Attributes. Social Network Analysis. 10. Sexual Preferences 11. Birthday 12. Sign of the Zodiac 13. Hometown 14. Country 15. Time Zone 16. Political Views 17. Religious Views Social Networks
  • 29. 18. Address 19. City 20. Zip 21. Country 22. Website 23. Email 24. Mobile Phone 25. Land Phone 26. Fax Contact Information. Social Network Analysis. 27. Skype ID 28. ICQ ID 29. AIM ID 30. Yahoo ID 31. WindowsLive ID 32. GoogleTalk ID 33. Gadu-Gadu ID Social Networks
  • 30. 34. Status 35. Employer 36. Position/Title 37. Company Website 38. Address 39. City 40. Zip Code 41. State 42. Country Work. Social Network Analysis. 43. Industry 44. Description 45. Wants 46. Haves 47. Time Period From 48. Time Period To 49. Business Organization Social Networks
  • 31. 50. College/University 51. Class Year 52. Attended for 53. Degree 54. College/Graduate School 55. Concentration 56. Second Concentration 57. Third Concentration 58. Degree Education. Social Network Analysis. 59. High School 60. Class Year Social Networks
  • 32. 61. Activities 62. Interests 63. Hobbies 64. Favorite Music 65. Favorite TV Shows 66. Favorite Movies 67. Favorite Books 68. Favorite Quotes 69. About Me Personal Information and Interests. Social Network Analysis. 70. Pictures 71. Uploaded Picture(s) 72. Picture Tags 73. Audio 74. Uploaded Audio 75. Audio Tags 76. Video 77. Uploaded Video(s) 78. Video Tags Social Networks
  • 33. 79. Location 80. Contacts 81. # of Contacts 82. Messages 83. # of Messages 84. Events 85. # of Events 86. Guestbook Entries 87. # of Guestbook Entries Connection and Usage Information. Social Network Analysis. 88. Online Status 89. Login Time 90. Usage 91. IP Address 92. Network 93. Operating System 94. Browser 95. Screen Size 96. Language Social Networks
  • 35. Social Network Analysis. Social Networks
  • 36. Inflow. Social Network Analysis. 2003. Social Networks Source: Valdis Krebs and David Krackhardt. Inflow/ Kite Network. 2003, Available: http://www.orgnet.com/sna.html
  • 37. Degrees/Centrality. Social Network Analyis. Social Networks
  • 38. Betweeness. Social Network Analysis. Social Networks
  • 39. Closeness. Social Network Analysis. Social Networks
  • 40. Male vs. Female. Social Networks
  • 41. Young vs. Old/Slim vs. Overweight/ Weak vs. Strong Social Networks
  • 43. Weight/ Direction/ Intensity of Relationships Social Networks
  • 45. Source: Ross Mayfield. Ryze Blog Tribe. Friends Network. December 2002, Available: http://radio.weblogs.com/0114726/2003/01/02.html#a176 Social Network Analysis Ryze Blog. Tribe. 2002. In 2002 Valdis Krebs, Pete Kaminski, and Ross Mayfield mapped the blogspace of Ryze, friendship networks and blogrolls of tribe members. The data of the Blog Tribe, a business network, includes 1,108 nodes of approximately 100 members captured within a month. A webcrawler was used to capture the links between individual members pages and InFlow 3.0 by Valdis was used to map and visualized the social network in its entirety.
  • 46. Source: Ross Mayfield. Ryze Blog Tribe. Friends Network. December 2002, Available: http://radio.weblogs.com/0114726/2003/01/02.html#a176
  • 47. Source: Heer, Jeffrey. Exploring Enron. Visualizing ANLP Results. University of California. 2004, Available: http://jheer.org/enron/v1/ and Keila, P. S. and D. B. Skillicorn. Detecting unusual email communication. IBM Centre for Advanced Studies Conference archive. Proceedings of the 2005 Conference of the Centre for Advanced Studies on Collaborative research. Toranto, Ontario, Canada, Pages 117 – 125, ISSN:1705-7361, Available: http://www.cs.queensu.ca/TechReports/Reports/2005-498.pdf Social Network Analysis Enron, a bankrupt energy company based in Houston employed around 21,000 people and was one of the biggest electricity, natural gas, and communications companies, with claimed revenues of $101 billion in 2000. Fortune magazine named Enron "America's Most Innovative Company" for six consecutive years. In 2001 Enron became the symbol of willful corporate and institutionalized fraud and corruption. Its European operations filed for bankruptcy on November 30, 2001, and it sought Chapter 11 protection in the U.S. two days later, on December 2. Enron. 2004.
  • 48. Social Network Analysis Enron. 2004.
  • 49. Social Network Analysis Enron. 2004.
  • 50. Social Network Analysis Enron. 2004.
  • 51. Social Network Analysis The graph provides a network map of the purchase patterns of political books based on data provided by major web book retailers after the 2006 mid-term elections. Starting with political books included in the New York Times Bestseller List a network of related books is created based on purchase patterns ("Customers who bought this item also bought...“), and visualized according to relationships, network neighborhood, and populace. The resulting graph underlines a divided readership, visualized by two distinct clusters with strong internal affiliations. Extreme positions are located at both sides, the middle ground is only represented by three individual books, eventually a reflection of the electoral debates. Purchase Patterns of Political Books. Orgnet. 2004. Source: Valdis Krebs. Divided We Stand... Still. Available: http://www.orgnet.com/divided2.html
  • 52. Social Network Analysis Purchase Patterns of Political Books. Orgnet. 2004. Source: Valdis Krebs. Divided We Stand... Still. Available: http://www.orgnet.com/divided2.html
  • 53. Source: Goetz, Kristina. “New teen study could help stop spread of sexually transmitted disease.” Columbia News Service. March 15, 2005, Available: http://jscms.jrn.columbia.edu/cns/2005-03-15/goetz-teensex Social Network Analysis Sociologists, mapping the romantic and sexual relationships of an American high school for 18 months revealed that teens, unlike adults, don’t have core groups that are highly sexually active. Instead, teens are linked to many other teens through former sexual connections. The findings can influence social policy and help stop the spread of sexually transmitted diseases among high school students because number of partners a teen has is less important than how he is connected to others in a kind of romantic chain. Jefferson High School. United States. 2005
  • 54. Source: Goetz, Kristina. “New teen study could help stop spread of sexually transmitted disease.” Columbia News Service. March 15, 2005, Available: http://jscms.jrn.columbia.edu/cns/2005-03-15/goetz-teensex Social Network Analysis Using data from the National Longitudinal Study of Adolescent Health, researchers analyzed the interviews and the structures of romantic and sexual relations of more than 800 students at an unidentified high school in the Midwest that they dubbed Jefferson High. Each circle represents a student and lines connecting students represent romantic relations occurring within the 6 months preceding the interviews. Numbers under the figure count the number of times that pattern was observed. Jefferson High School. United States. 2005
  • 55. Social Network Analysis Jefferson High School. United States. 2005 Source: Goetz, Kristina. “New teen study could help stop spread of sexually transmitted disease.” Columbia News Service. March 15, 2005, Available: http://jscms.jrn.columbia.edu/cns/2005-03-15/goetz-teensex
  • 56. Business Network Analysis. 2004. Source: Pascal Jaubert, Frank Langhans, and Prof. Hendrik Speck. Vinex. Business Network Analysis. University of Applied Sciences Kaiserslautern. 2004, Available: http://sourceforge.net/projects/vinex/ Social Network Analysis Vinex (virtual network explorer) reduces the complexity of social networks by visualizing their structures. Based on data collected by a web crawler from virtual communities, vinex offers the possibility to explore relationships between social networks, groups, and individual community members as well as interests, coordinates, profiles, addresses, email addresses, and themes.
  • 57.  
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  • 61. Studianalyse. 2006/2007. StudiAnalyse, a free software project, aims to analyze and visualize a social community network similar to Facebook. The network, launched in October 2005, is enjoying enormous popularity amongst students in Germany (currently serving more than 1,500,000 users.) Social Network Examples Source: Anna Lewandowski, Jennifer Gliem, Christoph Gerstle, Florian Moritz, and Prof. Hendrik Speck. Studianalyse. University of Applied Sciences Kaiserslautern. 2006/2007, Available: http://www.studianalyse.de.vu/
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  • 71. Source: Hagen Fritsch. StudiVZ. Inoffizielle Statistikpräsentation. December 2006, Available: http://studivz.irgendwo.org/ Statistics. StudiVZ. December 2006. Social Network Analysis
  • 72. Source: Hagen Fritsch. StudiVZ. Inoffizielle Statistikpräsentation. December 2006, Available: http://studivz.irgendwo.org/ Statistics. StudiVZ. December 2006. Social Network Analysis
  • 73. Source: Hagen Fritsch. StudiVZ. Inoffizielle Statistikpräsentation. December 2006, Available: http://studivz.irgendwo.org/ Statistics. StudiVZ. December 2006. Social Network Analysis
  • 74. Source: Hagen Fritsch. StudiVZ. Inoffizielle Statistikpräsentation. December 2006, Available: http://studivz.irgendwo.org/ Statistics. StudiVZ. December 2006. Social Network Analysis
  • 75. Source: Hagen Fritsch. StudiVZ. Inoffizielle Statistikpräsentation. December 2006, Available: http://studivz.irgendwo.org/ Social Network Analysis
  • 76. Source: Hagen Fritsch. StudiVZ. Inoffizielle Statistikpräsentation. December 2006, Available: http://studivz.irgendwo.org/ Statistics. StudiVZ. December 2006. Social Network Analysis
  • 77. Source: Hagen Fritsch. StudiVZ. Inoffizielle Statistikpräsentation. December 2006, Available: http://studivz.irgendwo.org/ Statistics. StudiVZ. December 2006. Social Network Analysis
  • 78. Source: Hagen Fritsch. StudiVZ. Inoffizielle Statistikpräsentation. December 2006, Available: http://studivz.irgendwo.org/ Statistics. StudiVZ. December 2006. Social Network Analysis
  • 79. Social Network Analysis Explores and visualizes related search engine results in Google’s database. The results are clustered automatically in categories, additional filters can be used to show, hide or expand individual nodes Nodes are represented by graphical favIcons, URL’s and/or site names; different sizes, shapes, and colors are used to represent categories, relationships, relative importance. The resulting graph provides instant feedback and can be modified and rearranged. Google Browser. Touchgraph. 2007 Source: Touchgraph. Google Browser. Available: http://www.touchgraph.com/TGGoogleBrowser.html
  • 80. Social Network Analysis European Graduate School. Touchgraph. 2007. Source: Touchgraph. Google Browser. Available: http://www.touchgraph.com/TGGoogleBrowser.html
  • 81. Social Network Analysis Massachusetts Institute of Technology. Touchgraph. 2007. Source: Touchgraph. Google Browser. Available: http://www.touchgraph.com/TGGoogleBrowser.html
  • 82. Social Network Analysis Playboy Magazine. Touchgraph. 2007. Source: Touchgraph. Google Browser. Available: http://www.touchgraph.com/TGGoogleBrowser.html
  • 83. Source: Crossway. Co-Occurrences of Names in the New Testament. January 2007, Available: http://services.alphaworks.ibm.com/manyeyes/view/SMGTJEsOtha6GEktsYeKE2- Social Network Analysis Visualizes the occurrence of biblical names in the same chapter of the New Testament. The visualization will connect two people who appear in the text near each other, even though that does not necessarily mean they have a relationship. An ontology, semantic knowledge base or genealogy dataset would improve the visualization. Biblical Figures in New Testament. 2007.
  • 84.  
  • 85. Source: W Bradford Paley. Alice in Wonderland TextArc. Information Esthetics. 2002, Available: http://informationesthetics.org/node/25 Social Network Analysis A TextArc visualization of Lewis Carrol’s classic story Alice’s Adventures in Wonderland; the visualization follows a chronological, clockwise pattern; frequently occurring terms are represented by brighter colors, characters mentioned throughout the book are located in the middle, brighter words around the outside suggest that this term or character is episodic in nature. Alice in Wonderland. 2002.
  • 86.  
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  • 88. Source: On, Josh and Amy Balkin. They Rule. Available: http://www.theyrule.net/ Social Network Analysis Visualizes the relationships between boards and directors of the biggest U.S. companies. Users can browse through interlocking directories, run searches on the boards and companies, save maps of connections complete with annotations and email links to these maps to others. They Rule. 2004.
  • 89.  
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  • 92. Source: Michael Kabdebo, Marc Rohe, Florian Bielsky, and Prof. Hendrik Speck. Infrastat. Business Network Analyzer. University of Applied Sciences Kaiserslautern. 2007, Available: http://sourceforge.net/projects/infrastat/ Social Network Analysis Infrastat visualizes the relationships between commercial and political interests in Germany, providing a detailed picture of the Deutschland AG. The framework relies on data provided by commercial content providers and visualizes the data within a modular visualization framework. The framework is currently expanded to include political affiliations, campaign contributions, user annotations and references. Infrastat. Economic Network Analyser. 2007.
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  • 96. Source: On, Josh and Amy Balkin. Exxon Secrets. 2005, Available: http://www.exxonsecrets.org/ Social Network Analysis Exxon Secrets, developed for Greenpeace, is exposing Exxon-Mobil's funding of climate change skeptics. The application provides a visual interface for the corporate funded anti-environmental movement. Some corporations, think tanks, conservative institutions and their spokespeople, call global warming a hoax. This project pretends to show how ExxonMobil is quietly funding these organizations by exposing the perfidious network of connections between ExxonMobil and the organizations and people that benefit from their funding. Exxon Secrets. 2005.
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  • 103. Social Network Analysis SpamCan is a web based software, which attracts spam so the harvester und spammer can be identified und localizied. Spam emails were separated in 10 catagories with help from the Bayesian filters. The programm relies on the Open Source SpamJAM framework in conjunction with new features and components. spamCAN. Spam Analyzer. 2006. Source: Ralf Wagner, Katharina Gerhardt, Yvonne Schmittler, and Prof. Hendrik Speck. SpamCan. Spam Analyzer. University of Applied Sciences Kaiserslautern. 2006, Available: http://sourceforge.net/projects/spamcanproject/
  • 104. Social Network Analysis spamCAN. Spam Analyzer. 2006. Source: Ralf Wagner, Katharina Gerhardt, Yvonne Schmittler, and Prof. Hendrik Speck. SpamCan. Spam Analyzer. University of Applied Sciences Kaiserslautern. 2006, Available: http://sourceforge.net/projects/spamcanproject/
  • 105. Social Network Analysis spamCAN. Spam Analyzer. 2006. Source: Ralf Wagner, Katharina Gerhardt, Yvonne Schmittler, and Prof. Hendrik Speck. SpamCan. Spam Analyzer. University of Applied Sciences Kaiserslautern. 2006, Available: http://sourceforge.net/projects/spamcanproject/
  • 106. Social Network Analysis spamCAN. Spam Analyzer. 2006. Source: Ralf Wagner, Katharina Gerhardt, Yvonne Schmittler, and Prof. Hendrik Speck. SpamCan. Spam Analyzer. University of Applied Sciences Kaiserslautern. 2006, Available: http://sourceforge.net/projects/spamcanproject/
  • 107. Social Network Analysis spamCAN. Spam Analyzer. 2006. Source: Ralf Wagner, Katharina Gerhardt, Yvonne Schmittler, and Prof. Hendrik Speck. SpamCan. Spam Analyzer. University of Applied Sciences Kaiserslautern. 2006, Available: http://sourceforge.net/projects/spamcanproject/
  • 108. PeerLo is a plugin for the bittorrent-client "Azureus". The plugin visualizes the bittorrent peers of torrents downloaded. The plugin collects the IP-adresses of the swarm and visualizes them on a map. Peerlow also provides some statistics of the peers location and their downloading/uploading behavior. Social Network Analysis PeerLo. Bittorrent Network Analyzer. 2006. Source: Andreas Augustin, Christian Becker, and Prof. Hendrik Speck. PeerLo. Bittorrent Network Analyzer. University of Applied Sciences Kaiserslautern. 2006, Available: http://sourceforge.net/projects/peerlo
  • 109. Social Network Analysis PeerLo. Bittorrent Network Analyzer. 2006. Source: Andreas Augustin, Christian Becker, and Prof. Hendrik Speck. PeerLo. Bittorrent Network Analyzer. University of Applied Sciences Kaiserslautern. 2006, Available: http://sourceforge.net/projects/peerlo
  • 110. Social Network Analysis PeerLo. Bittorrent Network Analyzer. 2006. Source: Andreas Augustin, Christian Becker, and Prof. Hendrik Speck. PeerLo. Bittorrent Network Analyzer. University of Applied Sciences Kaiserslautern. 2006, Available: http://sourceforge.net/projects/peerlo
  • 111. Social Network Analysis PeerLo. Bittorrent Network Analyzer. 2006. Source: Andreas Augustin, Christian Becker, and Prof. Hendrik Speck. PeerLo. Bittorrent Network Analyzer. University of Applied Sciences Kaiserslautern. 2006, Available: http://sourceforge.net/projects/peerlo
  • 112. PeerLo. Bittorrent Network Analyzer. 2006. Source: Andreas Augustin, Christian Becker, and Prof. Hendrik Speck. PeerLo. Bittorrent Network Analyzer. University of Applied Sciences Kaiserslautern. 2006, Available: http://sourceforge.net/projects/peerlo Social Network Analysis
  • 113. B.A.S.S (band analysis and suggestion system) is a software application which analyzes, visualizes and calculates music usage based on the social network of www.MySpace.com., or to be more correct, on the social network of musicians within MySpace. B.A.S.S. MySpace Music Analysis. 2006. Social Network Analysis Source: Thomas Klein, Patrick Mai, Fabian Winkhardt, and Prof. Hendrik Speck. BASS. MySpace Music Analysis. University of Applied Sciences Kaiserslautern. 2006, Available: http://sourceforge.net/projects/bass
  • 114. Social Network Analysis B.A.S.S. MySpace Music Analysis. 2006. Source: Thomas Klein, Patrick Mai, Fabian Winkhardt, and Prof. Hendrik Speck. BASS. MySpace Music Analysis. University of Applied Sciences Kaiserslautern. 2006, Available: http://sourceforge.net/projects/bass
  • 115. Social Network Analysis B.A.S.S. MySpace Music Analysis. 2006. Source: Thomas Klein, Patrick Mai, Fabian Winkhardt, and Prof. Hendrik Speck. BASS. MySpace Music Analysis. University of Applied Sciences Kaiserslautern. 2006, Available: http://sourceforge.net/projects/bass
  • 116. Social Network Analysis B.A.S.S. MySpace Music Analysis. 2006. Source: Thomas Klein, Patrick Mai, Fabian Winkhardt, and Prof. Hendrik Speck. BASS. MySpace Music Analysis. University of Applied Sciences Kaiserslautern. 2006, Available: http://sourceforge.net/projects/bass
  • 117. Visualizes the relationships between scientific areas, publications and connecting scientific paradigms of roughly 800,000 published papers categorized by 776 different scientific paradigms. Paradigms are represented by pale circular nodes based on the number of citations, links describe the relationship between paradigms and papers, node proximity and link intensity serve as indicators for the similarity between paradigms. General scientific areas are labeled, flowing labels include word lists unique to individual paradigms. Relationships Among Scientific Paradigms. 2007. Social Network Analysis Source: Boyack, Kevin , Dick Klavans, and W. Bradford Paley. "Relationships Among Scientific Paradigms." Seed. March 7, 2007, Available: http://seedmagazine.com/news/2007/03/scientific_method_relationship.php
  • 118. Relationships Among Scientific Paradigms. 2007. Social Network Analysis Source: Boyack, Kevin , Dick Klavans, and W. Bradford Paley. "Relationships Among Scientific Paradigms." Seed. March 7, 2007, Available: http://seedmagazine.com/news/2007/03/scientific_method_relationship.php
  • 119. Relationships Among Scientific Paradigms. 2007. Social Network Analysis Source: Boyack, Kevin , Dick Klavans, and W. Bradford Paley. "Relationships Among Scientific Paradigms." Seed. March 7, 2007, Available: http://seedmagazine.com/news/2007/03/scientific_method_relationship.php
  • 120. Relationships Among Scientific Paradigms. 2007. Social Network Analysis Source: Boyack, Kevin , Dick Klavans, and W. Bradford Paley. "Relationships Among Scientific Paradigms." Seed. March 7, 2007, Available: http://seedmagazine.com/news/2007/03/scientific_method_relationship.php
  • 121. Die Lokalisten. Social Network. 2007. Social Network Analysis Source: Heinen, Felix. Datenvisualisierung eines sozialen Netzwerks. Die Lokalisten. University of Applied Sciences Nürnberg. Diploma Thesis. 2007, Available: http://www.felixheinen.de/020.html Visualizes the interpersonal connections within Die Lokalisten, a German social network focusing on the “Who” aspect, especially profile information, network usage, membership status, age, educational background, family status, gender and other demographic data. A second visualization focuses on the “Where” – including but not limited to geographic location, membership distribution, local clusters and exchange processes
  • 122. Die Lokalisten. Social Network. 2007. Social Network Analysis Source: Heinen, Felix. Datenvisualisierung eines sozialen Netzwerks. Die Lokalisten. University of Applied Sciences Nürnberg. Diploma Thesis. 2007, Available: http://www.felixheinen.de/020.html
  • 123. Die Lokalisten. Social Network. 2007. Social Network Analysis Source: Heinen, Felix. Datenvisualisierung eines sozialen Netzwerks. Die Lokalisten. University of Applied Sciences Nürnberg. Diploma Thesis. 2007, Available: http://www.felixheinen.de/020.html
  • 125. Thank you for your attention. I will gladly answer your questions. Prof. Hendrik Speck contact (at) hendrikspeck [dot] com University of Applied Sciences Kaiserslautern Information Architecture Lab Amerikastrasse 1 66482 Zweibrücken Tel: +49 6332 914 360 Skype: hendrikspeck Conclusion Contact Information
  • 126. License Information. You are free to share (to copy, distribute and transmit the work) and to remix (to adapt the work) under the following conditions: Attribution. (You must attribute the work in the manner specified by the author or licensor but not in any way that suggests that they endorse you or your use of the work) Share Alike. (If you alter, transform, or build upon this work, you may distribute the resulting work only under the same, similar or a compatible license.) Conclusion Attribution-ShareAlike 3.0 Unported. License Information.