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Mining Social Networks Dr Andy Pryke Commercial Programming Lecture October 2011.

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Presentation on theme: "Mining Social Networks Dr Andy Pryke Commercial Programming Lecture October 2011."— Presentation transcript:

1 www.the-data-mine.co.uk Mining Social Networks Dr Andy Pryke Andy@the-data-mine.co.uk Commercial Programming Lecture October 2011

2 www.the-data-mine.co.uk Contents  What are Social Networks  Why Analyse Them?  Analysis Techniques  Example Applications

3 www.the-data-mine.co.uk Social Network Analysis  Also called Organizational Network Analysis  Pre-dates data mining.  Developed by sociologists and anthropologists  Formalise their understanding of family and community relationships.

4 www.the-data-mine.co.uk What is a Network  Referred to technically as a "graph".  Each person (or organisation etc.) is represented as a node.  Visually this is normally a dot or square.  Connections are called “ links ” or “ edges ”  Represented as a line.  Indicates communications (e.g. emails), purchases, visits, or less tangible things such as emotional relationships.  Can be “directed” or “undirected” e.g. On Twitter, you follow Stephen Fry, but he doesn’t follow you!

5 www.the-data-mine.co.uk Source: Erickson Data BlogErickson Data Blog

6 www.the-data-mine.co.uk Email communication Graph Nodes = People Links = Emails Source: orgnet.com

7 www.the-data-mine.co.uk Example - Mapping Links between Blogs Sources: http://discovermagazine.com/2007/may/map-welcome-to-the-blogosphere http://datamining.typepad.com/gallery/blog-map-gallery.html 1 - Daily Kos 2 - BoingBoing 3 - LiveJournal Users 4 - Highly Interlinked Blogs 5 - Porn Blogs - not linked in 6 - Sports Blogs - Separate but connected

8 www.the-data-mine.co.uk Example - Twitter Social Network Source: Bruno Peeters http://bvlg.blogspot.com/ 2007/04/twitter-vrienden.html

9 www.the-data-mine.co.uk Video Nicholas Christakis The hidden influence of social networks TED TalkTED Talk, Feb 2010

10 www.the-data-mine.co.uk Applications of Social Network DM Typical applications of social network analysis and data mining:  Detection of criminal activity, Counter terrorism, "homeland security" and intelligence  Analysis of relationships within companies  Sociological and anthropological studies  Reciprocal trust schemes such as e-bay ratings  Recommended friends on Facebook  Filter or recommend social media content  Etc….

11 www.the-data-mine.co.uk Complex Network Example

12 www.the-data-mine.co.uk Complex Network Example

13 www.the-data-mine.co.uk How do we Analyse Networks?

14 www.the-data-mine.co.uk Graph Statistics - Individual Nodes  Degree Centrality  Number of connections to other nodes.  High values mean many connections.  Can measure links in and out separately  Applications….

15 www.the-data-mine.co.uk Graph Statistics - Individual Nodes  Degree Centrality  Number of connections to other nodes.  High values mean many connections.  Can measure links in and out separately  Applications  Who is most listened to on Twitter?  Who has most contacts within a company?  Which user’s reviews influence others the most?

16 www.the-data-mine.co.uk Graph Statistics - Individual Nodes  Closeness Centrality  The average number of steps required to reach any other node. Communications are easier if you don't have to go through too many people.  Applications...

17 www.the-data-mine.co.uk Graph Statistics - Individual Nodes  Closeness Centrality  The average number of steps required to reach any other node. Communications are easier if you don't have to go through too many people.  Applications  Is this person central to the group?  Is your message likely to reach the audience?

18 www.the-data-mine.co.uk Graph Statistics - Individual Nodes  Betweenness Centrality  How much of a link between other nodes is this node?  Applications…

19 www.the-data-mine.co.uk Graph Statistics - Individual Nodes  Betweenness Centrality  How much of a link between other nodes is this node?  Applications  Someone who has a high betweenness centrality is often a broker between others.  What happens if this person leaves the network?

20 www.the-data-mine.co.uk Graph Statistics - Networks as a Whole  Structural holes  Gaps in linkage between groups.  Applications…

21 www.the-data-mine.co.uk Graph Statistics - Networks as a Whole  Structural holes  Gaps in linkage between groups.  Applications  Bridges across this access information from both, suggesting influence and understanding of an organisation.  Can we create a bridge?  Is there an opportunity to control or influence communications between groups?

22 www.the-data-mine.co.uk Graph Statistics - Networks as a Whole  Degree of centralisation  is the network held together by just a few nodes?  Or is it more cohesive?  Measures include average and variance of degree centrality  Applications…

23 www.the-data-mine.co.uk Graph Statistics - Networks as a Whole  Degree of centralisation  is the network held together by just a few nodes?  Or is it more cohesive?  Measures include average and variance of degree centrality  Applications  Is a crime network vulnerable to disruption?  What happens to a company if a few key people leave?

24 www.the-data-mine.co.uk Graph Statistics – More…  There are many other measures, for examples see:  http://faculty.ucr.edu/~hanneman/networkshop/index.html  http://en.wikipedia.org/wiki/Social_network

25 www.the-data-mine.co.uk Data Mining Approaches to Networks  Structural Equivalence  Find nodes with similar roles in the network  Cluster Analysis  Identify groups of nodes which are closely connected - and characterise them  Identifying the Most Influential People  Predicting Node Types (e.g. Fraudster)  Profiling Sub-networks (e.g. terrorist cell)

26 www.the-data-mine.co.uk Twitter - Clustered Network To reduce clutter, we can cluster people who reference each other, and only show links within clusters. http://www.neoformix.com/2009/To rontoTwitterCommunity.html

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32 www.the-data-mine.co.uk Data Mining Social Networks - Challenges  Standard problems  Incompleteness – We don’t know everything  Incorrectness – What we think we know is wrong  Inconsistency – We have contradictions in our data  Data transformation - Getting data into a form acceptable by your tools  Fuzzy Boundaries - Networks do not normally have distinct boundaries  Network Dynamics - Relationships change over time

33 www.the-data-mine.co.uk Example Application - Viral Marketing "In our experiments with the Epinions knowledge-sharing Web site, the most valuable customer had a network value of over 20,000, meaning that marketing to that customer was as effective as marketing to over 20,000 others in the absence of network effects, but the customer's number of direct links to others in the network (i.e., people who read his reviews) was much smaller." Pedro Domingos, Mining Social Networks for Viral Marketing http://www.cs.washington.edu/homes/pedrod/papers/iis04.pdf

34 www.the-data-mine.co.uk Example - Identifying Academic Groups Community Detection in Large-Scale Social Networks Nan Du, Bin Wu, Xin Pei, Bai Wang and Liutong Xu, SIGKDD Workshop on Web Mining and Social Network Analysis, August 12-15, 2007, San Jose, California

35 www.the-data-mine.co.uk Software for Social Network Analysis / DM StatNet – R Packages - http://statnet.org/ StatNetTutorial - http://www.jstatsoft.org/v24/i09/paper JUNG – Open Source Java toolkit for SNA - http://jung.sourceforge.net/ NetMiner - Commercial, Comprehensive SNA - http://www.netminer.com/ Pajek - Comprehensive Social Network Analysis, free for academic use - http://pajek.imfm.si/doku.php Subdue - Graph based data mining tool. Copyright but freely downloadable - http://ailab.wsu.edu/subdue/ More - http://en.wikipedia.org/wiki/Social_network_analysis_software

36 www.the-data-mine.co.uk Looking Forward  Lots and lots of network data out there  What about:  Applications for individuals  Social Applications (e.g. like TheyWorkForYou.com )  Applications within a University  Applications which make money  Potential final year / M.Sc Projects ?

37 www.the-data-mine.co.uk Mining Social Networks Dr Andy Pryke Andy@the-data-mine.co.uk Commercial Programming Lecture October 2011

38 www.the-data-mine.co.uk Bibliography Very out of date - do look for newer papers and references!

39 www.the-data-mine.co.uk Bibliography - Overview  Paper credited with launching the field - Barnes, J. (1954). Class and Committees in a Norwegian Island Parish. Human Relations, 7, 39-58.  List of systems for Mining Graph data - http://hms.liacs.nl/graphs.html  Introduction to Social Network Analysis - http://www.orgnet.com/sna.html  Network Theory and Analysis in Organizations, a brief overview - http://www.tcw.utwente.nl/theorieenoverzicht/Theory%20clusters/ Organizational%20Communication/Network%20Theory%20and% 20analysis_also_within_organizations.doc/

40 www.the-data-mine.co.uk Bibliography - Journals and Workshops  Social Networks Journal - http://www.elsevier.com/wps/find/journaldescription.cws_home/50 5596/description  Workshop on Link Analysis and Group Detection http://kt.ijs.si/Dunja/LinkKDD2006 /  SIGKDD Workshop on Web Mining and Social Network Analysis http://workshops.socialnetworkanalysis.info/websnakdd2007/

41 www.the-data-mine.co.uk Bibliography Data Mining Papers  Maitrayee Mukherjee, and Lawrence B. Holderm, Graph-based Data Mining on Social Networks - http://www- 2.cs.cmu.edu/~dunja/LinkKDD2004/Maitrayee-Mukherjee-LinkKDD-2004.pdf  Ingrid Fischer and Thorsten Meinl, Graph Based Molecular Data Mining - An Overview - http://www2.informatik.uni- erlangen.de/Forschung/Publikationen/download/graphBasedDM_SMC2004. pdf  Jennifer Xu and Hsinchun Chen, Criminal Network Analysis and Visualization: A Data Mining Perspective, Communications of the ACM - http://ai.eller.arizona.edu/COPLINK/publications/crimenet/Xu_CACM.doc

42 www.the-data-mine.co.uk Bibliography - Data Mining Papers (2)  Pedro Domingos, Mining Social Networks for Viral Marketing - http://www.cs.washington.edu/homes/pedrod/papers/iis04.pdf  David Jensen and Jennifer Neville, Data Mining in Social Networks - Looks specifically at predicting film receipts from IMDB data - http://kdl.cs.umass.edu/papers/jensen-neville-nas2002.pdf  Bootstrapping the FOAF-Web: An Experiment in Social Network Mining - http://www.w3.org/2001/sw/Europe/events/foaf- galway/papers/fp/bootstrapping_the_foaf_web/

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46 Impact of Computers on SNA The rise in the power and use of computers has had two main impacts. 1.New data is available from logs of email conversations, phone calls, chat and website usage, facebook friends, tweets etc... 2.Computers can be employed for analysis and data mining.

47 www.the-data-mine.co.uk Role of computer analysis  Data collected about social networks can be complex and large.  Imagine a network documenting each purchase you've made using a credit/debit card, every phone call and SMS, each email etc.  When these kinds of data are collected over large populations, the resulting graphs are much too large to be understood by eye.


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