SlideShare une entreprise Scribd logo
1  sur  18
Behaviour and Health Analysis of
Online Communities
Harith Alani
Knowledge Media institute
twitter.com/halani
delicious.com/halani
linkedin.com/pub/harith-alani/9/739/534
facebook.com/harith.alani
IFIP WG 12.7 – Galway, October 12, 2012
Milton Keynes
Knowledge Media institute (KMi)
• Set up in 1995 to bring the OU to the forefront of
research and development
• Different from the rest of the OU
– 100% focus on research and development
• has around 60 researchers, lead by 8 senior staff
• Over 100 projects, and 1000 publications
• Core research areas:
– Future Internet, Knowledge Management, Multimedia &
Information Systems, Narrative Hypermedia, New Media
Systems, Semantic Web & Knowledge Services, Social Software
0
0.2
0.4
0.6
0.8
1
1.2
1 5 9 13 17 21 25 29 33 37 41 45
H-Index F2F Degree F2F Strength
healthy scien fic & social
profiles. freq chairs/OCs
in LSS team
good scien fic, and
social signals
shy scien st?
outsider,
high profile
Students, PG, developers.
who's the next star researcher?
First encounter with ‘Behaviour analysis’
• Integration of physical
presence and online
information
• Semantic user profile
generation
• Logging of face-to-face contact
• Social network browsing
• Analysis of online vs offline
social networks
eParticipation is about reconnecting ordinary people with politics and
policy-making [….] Governments and the EU institutions working with citizens
to identify and test ways of giving them more of a stake in the policy-shaping
process, such as through public consultations on new legislation
• Problem is that people don’t use government portals, minister blogs, opinion collecting web sites
• Instead, they use social media
• Targeted at developing methods to understand and manage the business, social and economic
objectives of the users, providers and hosts and to meet the challenges of scale and growth in
large communities
• Management and risk analysis in business online communities
• Scalable, real time analysis of behaviour, value, and health of communities
http://robust-project.eu/
http://wegov-project.eu/
“specifically designed for
politicians, enabling them to monitor debate,
filter out the background "noise" and zoom in
on what people are saying about them and
their policies in a particular geographical area”
http://www.wegov-project.eu/
Management of Online Communities Health
– Which are strong and healthy?
– Which are aging and withering?
– What health signs should we look
for?
– How these signs differ between
different communities?
• Evolution
– Can we predict their future
evolution?
– How can their evolution be
influenced?
• Behaviour
– How can behaviour be detected?
– How are their member behaving?
– Which behaviour is good/bad in
which community type?
– What’s the lifecycle of behaviour
roles?
• Goals and Values
– What are the goals of these
communities?
– Are they fulfilling the goals of
their owners?
– Are they fulfilling the goals of
their members?
– Which members are valuable?
8
Tools for monitoring social networks
http://www.ubervu.com/
9
• Analytics:
– Mention volume
– Sentiment
– Discussion clouds
– Activity graphs and
metrics
– Language and
geolocation filtering
– Filter by social
platform
– Comparisons
http://www.viralheat.com/home
• Analytics:
– Influencing users
– Sentiment and opinion analysis
– Viral content analysis
– Detecting sales leads
– Filter by geo-location
Tweet recipe for generating more attention
• Identifying seed posts
Top features: Time in
Day, Readability, Out-
Degree, Polarity, Informativeness
Accuracy of the classification (J48)
F1: 0.841 (User + Content)
Top features: Referral Count, Topic
Likelihood, Informativeness, Readability,
User Age
Accuracy of the classification (J48)
F1: 0.792 (User + Content + Focus)
For both datasets:
• Content features play a greater role
than user features
• The combination of all features
provides the best results
• Predicting discussion activity Top features: Referral Count(-),
Complexity(-)
User features harm the performance
Top features: Referral Count(-), Polarity(-),
Topic Likelihood(+), Complexity (+)
Best with Content +Focus
For both, a decrease in Referral Count is
associated with heightened activity.
Language and terminology are more
significant for Boards.ie.
Semantic engine for behaviour analysis
• Bottom Up analysis
– Every community member is
classified into a “role”
– Unknown roles might be
identified
– Copes with role changes over
time
initiators
lurkers
followers
leaders
Structural, social network,
reciprocity, persistence, participation
Feature levels change with the
dynamics of the community
Associations of roles with a collection of
feature-to-level mappings
e.g. in-degree -> high, out-degree -> high
Run rules over each user’s features
and derive the community role composition
Correlation of behaviour with community activity
Forum 246 – Commuting
and Transport
Forum 388 – Rugby Forum 411 – Mobile Phones and PDAs
Online Community Health
Analytics
0.0 0.2 0.4 0.6 0.8 1.0
0.00.20.40.60.81.0
Churn Rate
FPR
TPR
0.0 0.2 0.4 0.6 0.8 1.0
0.00.20.40.60.81.0
User Count
FPR
TPR
0.0 0.2 0.4 0.6 0.8 1.0
0.00.20.40.60.81.0
Seeds / Non−seeds Prop
FPR
TPR
0.0 0.2 0.4 0.6 0.8 1.0
0.00.20.40.60.81.0
Clustering Coefficient
FPR
TPR
• Machine learning models to
predict community health based
on compositions and evolution
of user behaviour
Health
categories
0.0 0.2 0.4 0.6 0.8 1.0
0.00.20.40.60.81.0
Seeds / Non−seeds Prop
FPR
TPR
0.0 0.2 0.4 0.6 0.8 1.0
0.00.20.40.60.81.0
Clustering Coefficient
FPR
TPR
False Positive Rate
False Positive RateFalse Positive Rate
False Positive Rate
TruePositiveRateTruePositiveRate
TruePositiveRateTruePositiveRate
Behaviour evolution patterns
• Can we predict future
behaviour role?
• Who’s on the path to
become a leader? an
expert? a churner?
• Which users we want to
encourage staying/leaving?
experts to-be
about to churn
on right path
to leadership
OU Communities
• Many FB groups exist
for students of OU
courses
• Created and used by
students to discuss and
share opinions on
courses and get support
Behaviour
Analysis
Sentiment
Analysis
Topic
Analysis
Course tutors
Real time
monitoring
• How do students like
this course?
• What main topics are
they busy discussing?
• Do students get the
answers and support
they need?
• Which students are
likely to drop out?
What’s next!
• Community-type analysis
• Stability of results over time and events
• Health metrics (what’s good/bad?)
• Influence/change in behaviour
Relevant Publications
• Rowe, W. and H. Alani. What makes Communities Tick? Community Health Analysis using Role Compositions. Proceedings of
the Fourth IEEE International Conference on Social Computing. Amsterdam, The Netherlands (2012)
• Rowe, M., M Fernandez, S Angeletou and H Alani. Community Analysis through Semantic Rules and Role Composition
Derivation. In the Journal of Web Semantics (2012)
• Burel, G.; He, Y. and Alani, H. Automatic identification of best answers in online enquiry communities. In: 9th Extended
Semantic Web Conference, Crete, (2012)
• Rowe, Matthew; Fernandez, Miriam; Alani, Harith; Ronen, Inbal ; Hayes, Conor and Karnstedt, Marcel (2012). Behaviour
analysis across different types of Enterprise Online Communities. In: ACM web Science Conference 2012 (WebSci12),
Evanston, U.S.A, (2012)
• Rowe, M., Stankovic, M., and Alani, H. Who will follow whom? Exploiting semantics for link prediction in attention-
information networks. In: 11th International Semantic Web Conference (ISWC 2012), Boston, USA, (2012)
• Wagner, C., Rowe, M., Strohmaier, M. and Alani, H. Ignorance isn't bliss: an empirical analysis of attention patterns in online
communities. In: 4th IEEE International Conference on Social Computing, Amsterdam, The Netherlands, (2012)
• Angeletou, S., Rowe, M. and Alani, H. Modelling and Analysis of User Behaviour in Online Communities. International
Semantic Web Conference. Bonn, Germany (2011)
• Karnstedt, M., Rowe, M., Chan, J., Alani, H., and Hayes, C. The Effect of User Features on Churn in Social Networks. In: ACM
Web Science Conference 2011 (WebSci2011), Koblenz, Germany, (2011)
• Rowe, M., Angeletou, S., and Alani, H. Predicting discussions on the social semantic web. In: 8th Extended Semantic Web
Conference (ESWC 2011), Heraklion, Greece, (2011)
http://oro.open.ac.uk/view/person/ha2294.html

Contenu connexe

Tendances

2015 pdf-marc smith-node xl-social media sna
2015 pdf-marc smith-node xl-social media sna2015 pdf-marc smith-node xl-social media sna
2015 pdf-marc smith-node xl-social media snaMarc Smith
 
2010 sept - mobile web africa - marc smith - says who - mapping social medi...
2010   sept - mobile web africa - marc smith - says who - mapping social medi...2010   sept - mobile web africa - marc smith - says who - mapping social medi...
2010 sept - mobile web africa - marc smith - says who - mapping social medi...Marc Smith
 
2015 #MMeasure-Marc Smith-NodeXL Mapping social media using social network ma...
2015 #MMeasure-Marc Smith-NodeXL Mapping social media using social network ma...2015 #MMeasure-Marc Smith-NodeXL Mapping social media using social network ma...
2015 #MMeasure-Marc Smith-NodeXL Mapping social media using social network ma...Marc Smith
 
20151001 charles university prague - marc smith - node xl-picturing political...
20151001 charles university prague - marc smith - node xl-picturing political...20151001 charles university prague - marc smith - node xl-picturing political...
20151001 charles university prague - marc smith - node xl-picturing political...Marc Smith
 
Ph.D. defense: semantic social network analysis
Ph.D. defense: semantic social network analysisPh.D. defense: semantic social network analysis
Ph.D. defense: semantic social network analysisguillaume ereteo
 
2013 passbac-marc smith-node xl-sna-social media-formatted
2013 passbac-marc smith-node xl-sna-social media-formatted2013 passbac-marc smith-node xl-sna-social media-formatted
2013 passbac-marc smith-node xl-sna-social media-formattedMarc Smith
 
Social Media Mining - Chapter 8 (Influence and Homophily)
Social Media Mining - Chapter 8 (Influence and Homophily)Social Media Mining - Chapter 8 (Influence and Homophily)
Social Media Mining - Chapter 8 (Influence and Homophily)SocialMediaMining
 
2014 TheNextWeb-Mapping connections with NodeXL
2014 TheNextWeb-Mapping connections with NodeXL2014 TheNextWeb-Mapping connections with NodeXL
2014 TheNextWeb-Mapping connections with NodeXLMarc Smith
 
CS6010 Social Network Analysis Unit I
CS6010 Social Network Analysis Unit ICS6010 Social Network Analysis Unit I
CS6010 Social Network Analysis Unit Ipkaviya
 
Think Link: Network Insights with No Programming Skills
Think Link: Network Insights with No Programming SkillsThink Link: Network Insights with No Programming Skills
Think Link: Network Insights with No Programming SkillsMarc Smith
 
Visualizing Big Data - Social Network Analysis
Visualizing Big Data - Social Network AnalysisVisualizing Big Data - Social Network Analysis
Visualizing Big Data - Social Network AnalysisMichael Lieberman
 
NE7012- SOCIAL NETWORK ANALYSIS
NE7012- SOCIAL NETWORK ANALYSISNE7012- SOCIAL NETWORK ANALYSIS
NE7012- SOCIAL NETWORK ANALYSISrathnaarul
 
Social Network Analysis in Two Parts
Social Network Analysis in Two PartsSocial Network Analysis in Two Parts
Social Network Analysis in Two PartsPatti Anklam
 
Ona For Community Roundtable
Ona For Community RoundtableOna For Community Roundtable
Ona For Community RoundtablePatti Anklam
 
2016 SocialMedia.Org Marc Smith-NodeXL-Social Media SNA
2016 SocialMedia.Org Marc Smith-NodeXL-Social Media SNA2016 SocialMedia.Org Marc Smith-NodeXL-Social Media SNA
2016 SocialMedia.Org Marc Smith-NodeXL-Social Media SNAMarc Smith
 
Strategy Before Tactics
Strategy Before TacticsStrategy Before Tactics
Strategy Before TacticsMike Kujawski
 
Social Web 2014: Final Presentations (Part II)
Social Web 2014: Final Presentations (Part II)Social Web 2014: Final Presentations (Part II)
Social Web 2014: Final Presentations (Part II)Lora Aroyo
 
2013 NodeXL Social Media Network Analysis
2013 NodeXL Social Media Network Analysis2013 NodeXL Social Media Network Analysis
2013 NodeXL Social Media Network AnalysisMarc Smith
 

Tendances (20)

2015 pdf-marc smith-node xl-social media sna
2015 pdf-marc smith-node xl-social media sna2015 pdf-marc smith-node xl-social media sna
2015 pdf-marc smith-node xl-social media sna
 
2010 sept - mobile web africa - marc smith - says who - mapping social medi...
2010   sept - mobile web africa - marc smith - says who - mapping social medi...2010   sept - mobile web africa - marc smith - says who - mapping social medi...
2010 sept - mobile web africa - marc smith - says who - mapping social medi...
 
2015 #MMeasure-Marc Smith-NodeXL Mapping social media using social network ma...
2015 #MMeasure-Marc Smith-NodeXL Mapping social media using social network ma...2015 #MMeasure-Marc Smith-NodeXL Mapping social media using social network ma...
2015 #MMeasure-Marc Smith-NodeXL Mapping social media using social network ma...
 
20151001 charles university prague - marc smith - node xl-picturing political...
20151001 charles university prague - marc smith - node xl-picturing political...20151001 charles university prague - marc smith - node xl-picturing political...
20151001 charles university prague - marc smith - node xl-picturing political...
 
Ph.D. defense: semantic social network analysis
Ph.D. defense: semantic social network analysisPh.D. defense: semantic social network analysis
Ph.D. defense: semantic social network analysis
 
Social Media Mining and Analytics
Social Media Mining and AnalyticsSocial Media Mining and Analytics
Social Media Mining and Analytics
 
2013 passbac-marc smith-node xl-sna-social media-formatted
2013 passbac-marc smith-node xl-sna-social media-formatted2013 passbac-marc smith-node xl-sna-social media-formatted
2013 passbac-marc smith-node xl-sna-social media-formatted
 
Roles In Networks
Roles In NetworksRoles In Networks
Roles In Networks
 
Social Media Mining - Chapter 8 (Influence and Homophily)
Social Media Mining - Chapter 8 (Influence and Homophily)Social Media Mining - Chapter 8 (Influence and Homophily)
Social Media Mining - Chapter 8 (Influence and Homophily)
 
2014 TheNextWeb-Mapping connections with NodeXL
2014 TheNextWeb-Mapping connections with NodeXL2014 TheNextWeb-Mapping connections with NodeXL
2014 TheNextWeb-Mapping connections with NodeXL
 
CS6010 Social Network Analysis Unit I
CS6010 Social Network Analysis Unit ICS6010 Social Network Analysis Unit I
CS6010 Social Network Analysis Unit I
 
Think Link: Network Insights with No Programming Skills
Think Link: Network Insights with No Programming SkillsThink Link: Network Insights with No Programming Skills
Think Link: Network Insights with No Programming Skills
 
Visualizing Big Data - Social Network Analysis
Visualizing Big Data - Social Network AnalysisVisualizing Big Data - Social Network Analysis
Visualizing Big Data - Social Network Analysis
 
NE7012- SOCIAL NETWORK ANALYSIS
NE7012- SOCIAL NETWORK ANALYSISNE7012- SOCIAL NETWORK ANALYSIS
NE7012- SOCIAL NETWORK ANALYSIS
 
Social Network Analysis in Two Parts
Social Network Analysis in Two PartsSocial Network Analysis in Two Parts
Social Network Analysis in Two Parts
 
Ona For Community Roundtable
Ona For Community RoundtableOna For Community Roundtable
Ona For Community Roundtable
 
2016 SocialMedia.Org Marc Smith-NodeXL-Social Media SNA
2016 SocialMedia.Org Marc Smith-NodeXL-Social Media SNA2016 SocialMedia.Org Marc Smith-NodeXL-Social Media SNA
2016 SocialMedia.Org Marc Smith-NodeXL-Social Media SNA
 
Strategy Before Tactics
Strategy Before TacticsStrategy Before Tactics
Strategy Before Tactics
 
Social Web 2014: Final Presentations (Part II)
Social Web 2014: Final Presentations (Part II)Social Web 2014: Final Presentations (Part II)
Social Web 2014: Final Presentations (Part II)
 
2013 NodeXL Social Media Network Analysis
2013 NodeXL Social Media Network Analysis2013 NodeXL Social Media Network Analysis
2013 NodeXL Social Media Network Analysis
 

Similaire à Ifip wg-galway-

2009 - Connected Action - Marc Smith - Social Media Network Analysis
2009 - Connected Action - Marc Smith - Social Media Network Analysis2009 - Connected Action - Marc Smith - Social Media Network Analysis
2009 - Connected Action - Marc Smith - Social Media Network AnalysisMarc Smith
 
Knowledge Extraction from Social Media
Knowledge Extraction from Social MediaKnowledge Extraction from Social Media
Knowledge Extraction from Social MediaSeth Grimes
 
Social Network Analysis (Part 1)
Social Network Analysis (Part 1)Social Network Analysis (Part 1)
Social Network Analysis (Part 1)Vala Ali Rohani
 
Selasturkiye Guide To The Top 16 Social Media Research Questions By Mra Imro
Selasturkiye Guide To The Top 16 Social Media Research Questions By Mra ImroSelasturkiye Guide To The Top 16 Social Media Research Questions By Mra Imro
Selasturkiye Guide To The Top 16 Social Media Research Questions By Mra ImroZiya NISANOGLU
 
What's up at Kno.e.sis?
What's up at Kno.e.sis? What's up at Kno.e.sis?
What's up at Kno.e.sis? Amit Sheth
 
Social metadata for libraries, archives and museums: Research findings from t...
Social metadata for libraries, archives and museums: Research findings from t...Social metadata for libraries, archives and museums: Research findings from t...
Social metadata for libraries, archives and museums: Research findings from t...Rose Holley
 
Global Redirective Practices: an online workshop for a client
Global Redirective Practices: an online workshop for a clientGlobal Redirective Practices: an online workshop for a client
Global Redirective Practices: an online workshop for a clientSean Connolly
 
The Key Success Factor in Knowledge Management... What Else? Change Management
The Key Success Factor in Knowledge Management... What Else? Change ManagementThe Key Success Factor in Knowledge Management... What Else? Change Management
The Key Success Factor in Knowledge Management... What Else? Change ManagementPatti Anklam
 
Toluna QuickSurveys - case studies from Sony Music and Econsultancy
Toluna QuickSurveys - case studies from Sony Music and EconsultancyToluna QuickSurveys - case studies from Sony Music and Econsultancy
Toluna QuickSurveys - case studies from Sony Music and EconsultancyMark Simon
 
SRS presentation
SRS presentationSRS presentation
SRS presentationslavaxx
 
Smart service systems 20150228 v2
Smart service systems 20150228 v2Smart service systems 20150228 v2
Smart service systems 20150228 v2ISSIP
 
e-SIDES Community Position Paper User Manual
e-SIDES Community Position Paper User Manuale-SIDES Community Position Paper User Manual
e-SIDES Community Position Paper User Manuale-SIDES.eu
 
Working with Social Media Data: Ethics & good practice around collecting, usi...
Working with Social Media Data: Ethics & good practice around collecting, usi...Working with Social Media Data: Ethics & good practice around collecting, usi...
Working with Social Media Data: Ethics & good practice around collecting, usi...Nicola Osborne
 
2015-10-14 research seminar 2
2015-10-14 research seminar 22015-10-14 research seminar 2
2015-10-14 research seminar 2ifi8106tlu
 
What Do Future Technology and Trends Mean for You?
What Do Future Technology and Trends Mean for You?   				What Do Future Technology and Trends Mean for You?
What Do Future Technology and Trends Mean for You? Anne Adrian
 
Vertical Initiatives
Vertical InitiativesVertical Initiatives
Vertical InitiativesNicole Jones
 
Togy Jose: Organizational Network Analytics - Revealing the Real Networks
Togy Jose: Organizational Network Analytics - Revealing the Real NetworksTogy Jose: Organizational Network Analytics - Revealing the Real Networks
Togy Jose: Organizational Network Analytics - Revealing the Real NetworksEdunomica
 

Similaire à Ifip wg-galway- (20)

ESWC 2014 Tutorial Part 4
ESWC 2014 Tutorial Part 4ESWC 2014 Tutorial Part 4
ESWC 2014 Tutorial Part 4
 
2009 - Connected Action - Marc Smith - Social Media Network Analysis
2009 - Connected Action - Marc Smith - Social Media Network Analysis2009 - Connected Action - Marc Smith - Social Media Network Analysis
2009 - Connected Action - Marc Smith - Social Media Network Analysis
 
Knowledge Extraction from Social Media
Knowledge Extraction from Social MediaKnowledge Extraction from Social Media
Knowledge Extraction from Social Media
 
Social Network Analysis (Part 1)
Social Network Analysis (Part 1)Social Network Analysis (Part 1)
Social Network Analysis (Part 1)
 
Libraries and learning communities - Internet Librarian
Libraries and learning communities - Internet LibrarianLibraries and learning communities - Internet Librarian
Libraries and learning communities - Internet Librarian
 
Selasturkiye Guide To The Top 16 Social Media Research Questions By Mra Imro
Selasturkiye Guide To The Top 16 Social Media Research Questions By Mra ImroSelasturkiye Guide To The Top 16 Social Media Research Questions By Mra Imro
Selasturkiye Guide To The Top 16 Social Media Research Questions By Mra Imro
 
What's up at Kno.e.sis?
What's up at Kno.e.sis? What's up at Kno.e.sis?
What's up at Kno.e.sis?
 
Social metadata for libraries, archives and museums: Research findings from t...
Social metadata for libraries, archives and museums: Research findings from t...Social metadata for libraries, archives and museums: Research findings from t...
Social metadata for libraries, archives and museums: Research findings from t...
 
Global Redirective Practices: an online workshop for a client
Global Redirective Practices: an online workshop for a clientGlobal Redirective Practices: an online workshop for a client
Global Redirective Practices: an online workshop for a client
 
CIC Networked Learning Practices Workshop - Caroline Haythornthwaite
CIC Networked Learning Practices Workshop - Caroline HaythornthwaiteCIC Networked Learning Practices Workshop - Caroline Haythornthwaite
CIC Networked Learning Practices Workshop - Caroline Haythornthwaite
 
The Key Success Factor in Knowledge Management... What Else? Change Management
The Key Success Factor in Knowledge Management... What Else? Change ManagementThe Key Success Factor in Knowledge Management... What Else? Change Management
The Key Success Factor in Knowledge Management... What Else? Change Management
 
Toluna QuickSurveys - case studies from Sony Music and Econsultancy
Toluna QuickSurveys - case studies from Sony Music and EconsultancyToluna QuickSurveys - case studies from Sony Music and Econsultancy
Toluna QuickSurveys - case studies from Sony Music and Econsultancy
 
SRS presentation
SRS presentationSRS presentation
SRS presentation
 
Smart service systems 20150228 v2
Smart service systems 20150228 v2Smart service systems 20150228 v2
Smart service systems 20150228 v2
 
e-SIDES Community Position Paper User Manual
e-SIDES Community Position Paper User Manuale-SIDES Community Position Paper User Manual
e-SIDES Community Position Paper User Manual
 
Working with Social Media Data: Ethics & good practice around collecting, usi...
Working with Social Media Data: Ethics & good practice around collecting, usi...Working with Social Media Data: Ethics & good practice around collecting, usi...
Working with Social Media Data: Ethics & good practice around collecting, usi...
 
2015-10-14 research seminar 2
2015-10-14 research seminar 22015-10-14 research seminar 2
2015-10-14 research seminar 2
 
What Do Future Technology and Trends Mean for You?
What Do Future Technology and Trends Mean for You?   				What Do Future Technology and Trends Mean for You?
What Do Future Technology and Trends Mean for You?
 
Vertical Initiatives
Vertical InitiativesVertical Initiatives
Vertical Initiatives
 
Togy Jose: Organizational Network Analytics - Revealing the Real Networks
Togy Jose: Organizational Network Analytics - Revealing the Real NetworksTogy Jose: Organizational Network Analytics - Revealing the Real Networks
Togy Jose: Organizational Network Analytics - Revealing the Real Networks
 

Plus de The Open University

Misinformation vs Fact-Checks: The Ongoing Battle
Misinformation vs Fact-Checks: The Ongoing BattleMisinformation vs Fact-Checks: The Ongoing Battle
Misinformation vs Fact-Checks: The Ongoing BattleThe Open University
 
Co-Creating Misinformation Resilient Societies
Co-Creating Misinformation Resilient Societies Co-Creating Misinformation Resilient Societies
Co-Creating Misinformation Resilient Societies The Open University
 
SASIG Workshop on “Improving the digital landscape for our children”
SASIG Workshop on “Improving the digital landscape for our children”SASIG Workshop on “Improving the digital landscape for our children”
SASIG Workshop on “Improving the digital landscape for our children”The Open University
 
Co-Inform (Co-Creating Misinformation Resilient Societies)
Co-Inform (Co-Creating Misinformation Resilient Societies)Co-Inform (Co-Creating Misinformation Resilient Societies)
Co-Inform (Co-Creating Misinformation Resilient Societies)The Open University
 
Crisis Information Processing - with the power of A.I.
Crisis Information Processing - with the power of A.I.Crisis Information Processing - with the power of A.I.
Crisis Information Processing - with the power of A.I.The Open University
 
H2020 COMRADES project introduction
H2020 COMRADES project introduction H2020 COMRADES project introduction
H2020 COMRADES project introduction The Open University
 
Radicalisation detection on social media
Radicalisation detection on social mediaRadicalisation detection on social media
Radicalisation detection on social mediaThe Open University
 
Analysing the dark side of Social Media
Analysing the dark side of Social MediaAnalysing the dark side of Social Media
Analysing the dark side of Social MediaThe Open University
 
Detecting online grooming and radicalisation
Detecting online grooming and radicalisationDetecting online grooming and radicalisation
Detecting online grooming and radicalisationThe Open University
 
Detecting Grooming Behaviour on Social Media
Detecting Grooming Behaviour on Social MediaDetecting Grooming Behaviour on Social Media
Detecting Grooming Behaviour on Social MediaThe Open University
 
Semantics, Sensors, and the Social Web
Semantics, Sensors, and the Social WebSemantics, Sensors, and the Social Web
Semantics, Sensors, and the Social WebThe Open University
 

Plus de The Open University (15)

Misinformation vs Fact-Checks: The Ongoing Battle
Misinformation vs Fact-Checks: The Ongoing BattleMisinformation vs Fact-Checks: The Ongoing Battle
Misinformation vs Fact-Checks: The Ongoing Battle
 
knod22-Alani.pdf
knod22-Alani.pdfknod22-Alani.pdf
knod22-Alani.pdf
 
Co-Creating Misinformation Resilient Societies
Co-Creating Misinformation Resilient Societies Co-Creating Misinformation Resilient Societies
Co-Creating Misinformation Resilient Societies
 
SASIG Workshop on “Improving the digital landscape for our children”
SASIG Workshop on “Improving the digital landscape for our children”SASIG Workshop on “Improving the digital landscape for our children”
SASIG Workshop on “Improving the digital landscape for our children”
 
COMRADES summary
COMRADES summaryCOMRADES summary
COMRADES summary
 
COMRADES project introduction
COMRADES project introduction COMRADES project introduction
COMRADES project introduction
 
Co-Inform (Co-Creating Misinformation Resilient Societies)
Co-Inform (Co-Creating Misinformation Resilient Societies)Co-Inform (Co-Creating Misinformation Resilient Societies)
Co-Inform (Co-Creating Misinformation Resilient Societies)
 
COMRADES ICT2018
COMRADES ICT2018COMRADES ICT2018
COMRADES ICT2018
 
Crisis Information Processing - with the power of A.I.
Crisis Information Processing - with the power of A.I.Crisis Information Processing - with the power of A.I.
Crisis Information Processing - with the power of A.I.
 
H2020 COMRADES project introduction
H2020 COMRADES project introduction H2020 COMRADES project introduction
H2020 COMRADES project introduction
 
Radicalisation detection on social media
Radicalisation detection on social mediaRadicalisation detection on social media
Radicalisation detection on social media
 
Analysing the dark side of Social Media
Analysing the dark side of Social MediaAnalysing the dark side of Social Media
Analysing the dark side of Social Media
 
Detecting online grooming and radicalisation
Detecting online grooming and radicalisationDetecting online grooming and radicalisation
Detecting online grooming and radicalisation
 
Detecting Grooming Behaviour on Social Media
Detecting Grooming Behaviour on Social MediaDetecting Grooming Behaviour on Social Media
Detecting Grooming Behaviour on Social Media
 
Semantics, Sensors, and the Social Web
Semantics, Sensors, and the Social WebSemantics, Sensors, and the Social Web
Semantics, Sensors, and the Social Web
 

Dernier

How to convert PDF to text with Nanonets
How to convert PDF to text with NanonetsHow to convert PDF to text with Nanonets
How to convert PDF to text with Nanonetsnaman860154
 
IAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsIAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsEnterprise Knowledge
 
Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 365
Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 365Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 365
Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 3652toLead Limited
 
Swan(sea) Song – personal research during my six years at Swansea ... and bey...
Swan(sea) Song – personal research during my six years at Swansea ... and bey...Swan(sea) Song – personal research during my six years at Swansea ... and bey...
Swan(sea) Song – personal research during my six years at Swansea ... and bey...Alan Dix
 
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...Neo4j
 
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...Patryk Bandurski
 
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking Men08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking MenDelhi Call girls
 
The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024Rafal Los
 
Beyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry InnovationBeyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry InnovationSafe Software
 
SQL Database Design For Developers at php[tek] 2024
SQL Database Design For Developers at php[tek] 2024SQL Database Design For Developers at php[tek] 2024
SQL Database Design For Developers at php[tek] 2024Scott Keck-Warren
 
Slack Application Development 101 Slides
Slack Application Development 101 SlidesSlack Application Development 101 Slides
Slack Application Development 101 Slidespraypatel2
 
#StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024
#StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024#StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024
#StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024BookNet Canada
 
Salesforce Community Group Quito, Salesforce 101
Salesforce Community Group Quito, Salesforce 101Salesforce Community Group Quito, Salesforce 101
Salesforce Community Group Quito, Salesforce 101Paola De la Torre
 
A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)Gabriella Davis
 
Scaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organizationScaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organizationRadu Cotescu
 
Kotlin Multiplatform & Compose Multiplatform - Starter kit for pragmatics
Kotlin Multiplatform & Compose Multiplatform - Starter kit for pragmaticsKotlin Multiplatform & Compose Multiplatform - Starter kit for pragmatics
Kotlin Multiplatform & Compose Multiplatform - Starter kit for pragmaticscarlostorres15106
 
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure service
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure serviceWhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure service
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure servicePooja Nehwal
 
Transforming Data Streams with Kafka Connect: An Introduction to Single Messa...
Transforming Data Streams with Kafka Connect: An Introduction to Single Messa...Transforming Data Streams with Kafka Connect: An Introduction to Single Messa...
Transforming Data Streams with Kafka Connect: An Introduction to Single Messa...HostedbyConfluent
 
[2024]Digital Global Overview Report 2024 Meltwater.pdf
[2024]Digital Global Overview Report 2024 Meltwater.pdf[2024]Digital Global Overview Report 2024 Meltwater.pdf
[2024]Digital Global Overview Report 2024 Meltwater.pdfhans926745
 
Handwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed textsHandwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed textsMaria Levchenko
 

Dernier (20)

How to convert PDF to text with Nanonets
How to convert PDF to text with NanonetsHow to convert PDF to text with Nanonets
How to convert PDF to text with Nanonets
 
IAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsIAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI Solutions
 
Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 365
Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 365Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 365
Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 365
 
Swan(sea) Song – personal research during my six years at Swansea ... and bey...
Swan(sea) Song – personal research during my six years at Swansea ... and bey...Swan(sea) Song – personal research during my six years at Swansea ... and bey...
Swan(sea) Song – personal research during my six years at Swansea ... and bey...
 
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...
 
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
 
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking Men08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
 
The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024
 
Beyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry InnovationBeyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
 
SQL Database Design For Developers at php[tek] 2024
SQL Database Design For Developers at php[tek] 2024SQL Database Design For Developers at php[tek] 2024
SQL Database Design For Developers at php[tek] 2024
 
Slack Application Development 101 Slides
Slack Application Development 101 SlidesSlack Application Development 101 Slides
Slack Application Development 101 Slides
 
#StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024
#StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024#StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024
#StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024
 
Salesforce Community Group Quito, Salesforce 101
Salesforce Community Group Quito, Salesforce 101Salesforce Community Group Quito, Salesforce 101
Salesforce Community Group Quito, Salesforce 101
 
A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)
 
Scaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organizationScaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organization
 
Kotlin Multiplatform & Compose Multiplatform - Starter kit for pragmatics
Kotlin Multiplatform & Compose Multiplatform - Starter kit for pragmaticsKotlin Multiplatform & Compose Multiplatform - Starter kit for pragmatics
Kotlin Multiplatform & Compose Multiplatform - Starter kit for pragmatics
 
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure service
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure serviceWhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure service
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure service
 
Transforming Data Streams with Kafka Connect: An Introduction to Single Messa...
Transforming Data Streams with Kafka Connect: An Introduction to Single Messa...Transforming Data Streams with Kafka Connect: An Introduction to Single Messa...
Transforming Data Streams with Kafka Connect: An Introduction to Single Messa...
 
[2024]Digital Global Overview Report 2024 Meltwater.pdf
[2024]Digital Global Overview Report 2024 Meltwater.pdf[2024]Digital Global Overview Report 2024 Meltwater.pdf
[2024]Digital Global Overview Report 2024 Meltwater.pdf
 
Handwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed textsHandwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed texts
 

Ifip wg-galway-

  • 1. Behaviour and Health Analysis of Online Communities Harith Alani Knowledge Media institute twitter.com/halani delicious.com/halani linkedin.com/pub/harith-alani/9/739/534 facebook.com/harith.alani IFIP WG 12.7 – Galway, October 12, 2012
  • 3. Knowledge Media institute (KMi) • Set up in 1995 to bring the OU to the forefront of research and development • Different from the rest of the OU – 100% focus on research and development • has around 60 researchers, lead by 8 senior staff • Over 100 projects, and 1000 publications • Core research areas: – Future Internet, Knowledge Management, Multimedia & Information Systems, Narrative Hypermedia, New Media Systems, Semantic Web & Knowledge Services, Social Software
  • 4. 0 0.2 0.4 0.6 0.8 1 1.2 1 5 9 13 17 21 25 29 33 37 41 45 H-Index F2F Degree F2F Strength healthy scien fic & social profiles. freq chairs/OCs in LSS team good scien fic, and social signals shy scien st? outsider, high profile Students, PG, developers. who's the next star researcher? First encounter with ‘Behaviour analysis’ • Integration of physical presence and online information • Semantic user profile generation • Logging of face-to-face contact • Social network browsing • Analysis of online vs offline social networks
  • 5. eParticipation is about reconnecting ordinary people with politics and policy-making [….] Governments and the EU institutions working with citizens to identify and test ways of giving them more of a stake in the policy-shaping process, such as through public consultations on new legislation • Problem is that people don’t use government portals, minister blogs, opinion collecting web sites • Instead, they use social media • Targeted at developing methods to understand and manage the business, social and economic objectives of the users, providers and hosts and to meet the challenges of scale and growth in large communities • Management and risk analysis in business online communities • Scalable, real time analysis of behaviour, value, and health of communities http://robust-project.eu/ http://wegov-project.eu/
  • 6. “specifically designed for politicians, enabling them to monitor debate, filter out the background "noise" and zoom in on what people are saying about them and their policies in a particular geographical area” http://www.wegov-project.eu/
  • 7. Management of Online Communities Health – Which are strong and healthy? – Which are aging and withering? – What health signs should we look for? – How these signs differ between different communities? • Evolution – Can we predict their future evolution? – How can their evolution be influenced? • Behaviour – How can behaviour be detected? – How are their member behaving? – Which behaviour is good/bad in which community type? – What’s the lifecycle of behaviour roles? • Goals and Values – What are the goals of these communities? – Are they fulfilling the goals of their owners? – Are they fulfilling the goals of their members? – Which members are valuable?
  • 8. 8 Tools for monitoring social networks
  • 9. http://www.ubervu.com/ 9 • Analytics: – Mention volume – Sentiment – Discussion clouds – Activity graphs and metrics – Language and geolocation filtering – Filter by social platform – Comparisons
  • 10. http://www.viralheat.com/home • Analytics: – Influencing users – Sentiment and opinion analysis – Viral content analysis – Detecting sales leads – Filter by geo-location
  • 11. Tweet recipe for generating more attention • Identifying seed posts Top features: Time in Day, Readability, Out- Degree, Polarity, Informativeness Accuracy of the classification (J48) F1: 0.841 (User + Content) Top features: Referral Count, Topic Likelihood, Informativeness, Readability, User Age Accuracy of the classification (J48) F1: 0.792 (User + Content + Focus) For both datasets: • Content features play a greater role than user features • The combination of all features provides the best results • Predicting discussion activity Top features: Referral Count(-), Complexity(-) User features harm the performance Top features: Referral Count(-), Polarity(-), Topic Likelihood(+), Complexity (+) Best with Content +Focus For both, a decrease in Referral Count is associated with heightened activity. Language and terminology are more significant for Boards.ie.
  • 12. Semantic engine for behaviour analysis • Bottom Up analysis – Every community member is classified into a “role” – Unknown roles might be identified – Copes with role changes over time initiators lurkers followers leaders Structural, social network, reciprocity, persistence, participation Feature levels change with the dynamics of the community Associations of roles with a collection of feature-to-level mappings e.g. in-degree -> high, out-degree -> high Run rules over each user’s features and derive the community role composition
  • 13. Correlation of behaviour with community activity Forum 246 – Commuting and Transport Forum 388 – Rugby Forum 411 – Mobile Phones and PDAs
  • 14. Online Community Health Analytics 0.0 0.2 0.4 0.6 0.8 1.0 0.00.20.40.60.81.0 Churn Rate FPR TPR 0.0 0.2 0.4 0.6 0.8 1.0 0.00.20.40.60.81.0 User Count FPR TPR 0.0 0.2 0.4 0.6 0.8 1.0 0.00.20.40.60.81.0 Seeds / Non−seeds Prop FPR TPR 0.0 0.2 0.4 0.6 0.8 1.0 0.00.20.40.60.81.0 Clustering Coefficient FPR TPR • Machine learning models to predict community health based on compositions and evolution of user behaviour Health categories 0.0 0.2 0.4 0.6 0.8 1.0 0.00.20.40.60.81.0 Seeds / Non−seeds Prop FPR TPR 0.0 0.2 0.4 0.6 0.8 1.0 0.00.20.40.60.81.0 Clustering Coefficient FPR TPR False Positive Rate False Positive RateFalse Positive Rate False Positive Rate TruePositiveRateTruePositiveRate TruePositiveRateTruePositiveRate
  • 15. Behaviour evolution patterns • Can we predict future behaviour role? • Who’s on the path to become a leader? an expert? a churner? • Which users we want to encourage staying/leaving? experts to-be about to churn on right path to leadership
  • 16. OU Communities • Many FB groups exist for students of OU courses • Created and used by students to discuss and share opinions on courses and get support Behaviour Analysis Sentiment Analysis Topic Analysis Course tutors Real time monitoring • How do students like this course? • What main topics are they busy discussing? • Do students get the answers and support they need? • Which students are likely to drop out?
  • 17. What’s next! • Community-type analysis • Stability of results over time and events • Health metrics (what’s good/bad?) • Influence/change in behaviour
  • 18. Relevant Publications • Rowe, W. and H. Alani. What makes Communities Tick? Community Health Analysis using Role Compositions. Proceedings of the Fourth IEEE International Conference on Social Computing. Amsterdam, The Netherlands (2012) • Rowe, M., M Fernandez, S Angeletou and H Alani. Community Analysis through Semantic Rules and Role Composition Derivation. In the Journal of Web Semantics (2012) • Burel, G.; He, Y. and Alani, H. Automatic identification of best answers in online enquiry communities. In: 9th Extended Semantic Web Conference, Crete, (2012) • Rowe, Matthew; Fernandez, Miriam; Alani, Harith; Ronen, Inbal ; Hayes, Conor and Karnstedt, Marcel (2012). Behaviour analysis across different types of Enterprise Online Communities. In: ACM web Science Conference 2012 (WebSci12), Evanston, U.S.A, (2012) • Rowe, M., Stankovic, M., and Alani, H. Who will follow whom? Exploiting semantics for link prediction in attention- information networks. In: 11th International Semantic Web Conference (ISWC 2012), Boston, USA, (2012) • Wagner, C., Rowe, M., Strohmaier, M. and Alani, H. Ignorance isn't bliss: an empirical analysis of attention patterns in online communities. In: 4th IEEE International Conference on Social Computing, Amsterdam, The Netherlands, (2012) • Angeletou, S., Rowe, M. and Alani, H. Modelling and Analysis of User Behaviour in Online Communities. International Semantic Web Conference. Bonn, Germany (2011) • Karnstedt, M., Rowe, M., Chan, J., Alani, H., and Hayes, C. The Effect of User Features on Churn in Social Networks. In: ACM Web Science Conference 2011 (WebSci2011), Koblenz, Germany, (2011) • Rowe, M., Angeletou, S., and Alani, H. Predicting discussions on the social semantic web. In: 8th Extended Semantic Web Conference (ESWC 2011), Heraklion, Greece, (2011) http://oro.open.ac.uk/view/person/ha2294.html

Notes de l'éditeur

  1. Slide1: who you areFuture Internet – here KMi is playing a major role in shaping the future Internet in a large EU initiative, which envisages a global network encompassing both a variety of devices and a variety of services; Knowledge Management – developing new methods for capturing, interpreting, organising and sharing knowledge in a variety of learning and knowledge management contexts – e.g., we work with OU students, school children, the corporate world, etc.; Multimedia & Information Systems (MMIS) – developing new solutions for indexing, searching, organising and interacting with different types of media content; Narrative Hypermedia – developing new infrastructures to support collaborative discourse and sensemaking in fields such as open, participatory learning, e-democracy, scholarly research and knowledge management; New Media Systems – developing and applying new media solutions, such as desktop video conferencing, video blogs, podcasting, etc, in a variety of learning and commercial contexts; Semantic Web & Knowledge Services – researching the emerging Semantic Web (or Web 3.0), to develop new methods for locating, organising and making sense of web content; Social Software – this can be thought of as "software which extends, or derives added value from, human social behaviour - message boards, musical taste-sharing, photo-sharing, instant messaging, mailing lists, social networking”. Here we investigate various contexts of work, learning and play to better understand the trade-offs involved in designing effective large-scale social software application, which can be effective in a variety of contexts.
  2. Semantics to facilitate integrating all this info and adding meaning to some of the SNS data. Semantics makes it easier to integrate and analyse such multidimensional networks.
  3. Risk and opportunity management tools and methods for online communitiesCloud based data management and processing to support real-time analytics Representations, measures, and monitors for user, subgroup behaviour and community evolution in online communitiesLarge scale simulation for predicting impact of user behaviour and policies on community evolution and the risks and opportunities for online business.Scalable real time tools and algorithms for community analysis including dynamics and interactions
  4. http://www.viralheat.com/homeInfluence is based on number of followers! Viral analysis – analyses content that is going viralDetecting sales leads from intent analysis to identify what users are interested in
  5. Content features play a greater role than user featuresThe combination of all features provides the best resultsBoxplots help to visualise the distribution of the data, by splitting them into quartiles, with top max and bottom min, and outliers and median all shown on the plot. Boxplots: http://flowingdata.com/2008/02/15/how-to-read-and-use-a-box-and-whisker-plot/
  6. Receiver Operator Characteristic CurveTrue Positive RateFalse Positive Rate