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Foroogh Sedighi Evangelos Tolias Hamid Sar Koysina Kristina
Proposed system What movies would I like to watch? Recommendation scenarios What cinema is the bestplace to watch this movie? What movie is the best optionto watch in this Cinema?
Related works Academia Market Jinni Taste Engine Movies Now Filxup Faves for Facebook Trust-based recommendations Recommendation Systems Advanced Recommendation algorithms
See the difference
Social Aspects of MovieIt
Economic Aspects of MovieIt
User Value Fulfillment of self expression  Captures a movie social activity aspect Better recommendations based on: 		Geolocation information 		Trusted Network (movies that friend that I 	follow watched and rated) 		Movies I saw and rated
Revenue Models Supported Affiliate Model  gain traffic from  social networks Targeted Advertisement exploiting our recommendation system Revenue
The Long Tail Recommendations for Popular movies Cult Movies (Art house films) SOURCE: www.searchengineguide.com
Further development Future work Folksonomies(users add keywords to movies for better search) Streamed twitter feeds
System Architecture Twitter Rest API (OAuth v1.oa) Facebook Graph API (Oauth 2.0) Themoviedb Rest API MySql (JDBC) JSON-simple Xstream Scribe-Java Pure HTML5 JavaScript Jquery Jquery Mobile Native mobile apps Mobile Web apps Web apps Desktop apps Clients Rest/JSON Rest/JSON HTML MovieIt Rest/JSON Tomcat Apache HTTP Server MovieIt Servlet Rest/JSON TmDB Local DB MySQL SOURCE iPhone:www.clker.com, SOURCE Computer: www.manonatha.net
Recommendations Multidimensional recommendations What to watch? Where to watch? Should I watch it? Who wants to watch it with me?  SOURCE: http://clowder.net/hop/Riemann/Riemann.html
Conclusion Meaningful information MovieIt Network effect Infrastructure
Thank You! Any Questions?

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MovieIt

  • 1. Foroogh Sedighi Evangelos Tolias Hamid Sar Koysina Kristina
  • 2. Proposed system What movies would I like to watch? Recommendation scenarios What cinema is the bestplace to watch this movie? What movie is the best optionto watch in this Cinema?
  • 3. Related works Academia Market Jinni Taste Engine Movies Now Filxup Faves for Facebook Trust-based recommendations Recommendation Systems Advanced Recommendation algorithms
  • 7. User Value Fulfillment of self expression Captures a movie social activity aspect Better recommendations based on: Geolocation information Trusted Network (movies that friend that I follow watched and rated) Movies I saw and rated
  • 8. Revenue Models Supported Affiliate Model gain traffic from social networks Targeted Advertisement exploiting our recommendation system Revenue
  • 9. The Long Tail Recommendations for Popular movies Cult Movies (Art house films) SOURCE: www.searchengineguide.com
  • 10. Further development Future work Folksonomies(users add keywords to movies for better search) Streamed twitter feeds
  • 11. System Architecture Twitter Rest API (OAuth v1.oa) Facebook Graph API (Oauth 2.0) Themoviedb Rest API MySql (JDBC) JSON-simple Xstream Scribe-Java Pure HTML5 JavaScript Jquery Jquery Mobile Native mobile apps Mobile Web apps Web apps Desktop apps Clients Rest/JSON Rest/JSON HTML MovieIt Rest/JSON Tomcat Apache HTTP Server MovieIt Servlet Rest/JSON TmDB Local DB MySQL SOURCE iPhone:www.clker.com, SOURCE Computer: www.manonatha.net
  • 12. Recommendations Multidimensional recommendations What to watch? Where to watch? Should I watch it? Who wants to watch it with me? SOURCE: http://clowder.net/hop/Riemann/Riemann.html
  • 13. Conclusion Meaningful information MovieIt Network effect Infrastructure
  • 14. Thank You! Any Questions?