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Personalizing Netflix

    A brief history
            Jon Sanders
 Recommendation Systems Engineering
               Netflix
           Los Gatos, CA
       jsanders @ netflix.com

        http://jobs.netflix.com
Fun facts about Netflix
World’s largest online movie rental service   #1 in customer satisfaction
Founded 1997                                  Video rental companies (Consumer Reports)
                                              Online retail (ForeSee)

With more than…
                                              On an average day
10M subscribers, $1B revenue
                                              2M DVDs shipped
100K DVD titles, 50 distribution centers
                                              2M movie ratings received
12K streaming movies & TV episodes
1.5B minutes streamed to 1M Xbox360’s
2B movie ratings




60% of movies selected based on personalized recommendations

                 Connecting people with movies they’ll love
In the beginning…




 Everyone sees the same site
Evolve methodically
The rating widget

•  Ask about & predict movie Enjoyment

•  User-similarity collaborative filter

•  Recommendations fuel discovery
Score & sort any movie




Combine popularity & enjoyment prediction
Tune recommendations
•  Movie-similarity collaborative filter

•  K-nearest-neighbor algorithm

•  More credible connections
Interest-based discovery




Metadata connections: actor, director, genre, …
Ask about Interest




Moderate prominence of catalog areas
Ask other people




Community offers decision support
Explain why




Build trust with reflected evidence
$1M Netflix Prize
•  Improve accuracy of Enjoyment predictions
   –  100M ratings
   –  Achieve 10% better than Netflix RMSE


•  Innovative, engaged research community

•  Highly relevant results
   –  Global and time-based corrections
   –  SVD, RBM models
   –  Blending predictors
A website for each subscriber
Evolution continues
•  Tailor with more metadata, implicit data
•  Streaming-specific personalization




•  Collaborative Filtering is a component of personalization
•  People want to drive, not be led
•  Offer discovery, focus and decision support

                   http://jobs.netflix.com
Links

•    http://jobs.netflix.com
•    http://www.netflix.com/ContactUs
•    http://www.netflixprize.com
•    http://www.netflix.com/netflixfindyourvoice
•    http://en.wikipedia.org/wiki/Collaborative_filtering

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Personalizing Netflix Recommendations

  • 1. Personalizing Netflix A brief history Jon Sanders Recommendation Systems Engineering Netflix Los Gatos, CA jsanders @ netflix.com http://jobs.netflix.com
  • 2. Fun facts about Netflix World’s largest online movie rental service #1 in customer satisfaction Founded 1997 Video rental companies (Consumer Reports) Online retail (ForeSee) With more than… On an average day 10M subscribers, $1B revenue 2M DVDs shipped 100K DVD titles, 50 distribution centers 2M movie ratings received 12K streaming movies & TV episodes 1.5B minutes streamed to 1M Xbox360’s 2B movie ratings 60% of movies selected based on personalized recommendations Connecting people with movies they’ll love
  • 3. In the beginning… Everyone sees the same site
  • 5. The rating widget •  Ask about & predict movie Enjoyment •  User-similarity collaborative filter •  Recommendations fuel discovery
  • 6. Score & sort any movie Combine popularity & enjoyment prediction
  • 7. Tune recommendations •  Movie-similarity collaborative filter •  K-nearest-neighbor algorithm •  More credible connections
  • 9. Ask about Interest Moderate prominence of catalog areas
  • 10. Ask other people Community offers decision support
  • 11. Explain why Build trust with reflected evidence
  • 12. $1M Netflix Prize •  Improve accuracy of Enjoyment predictions –  100M ratings –  Achieve 10% better than Netflix RMSE •  Innovative, engaged research community •  Highly relevant results –  Global and time-based corrections –  SVD, RBM models –  Blending predictors
  • 13. A website for each subscriber
  • 14. Evolution continues •  Tailor with more metadata, implicit data •  Streaming-specific personalization •  Collaborative Filtering is a component of personalization •  People want to drive, not be led •  Offer discovery, focus and decision support http://jobs.netflix.com
  • 15. Links •  http://jobs.netflix.com •  http://www.netflix.com/ContactUs •  http://www.netflixprize.com •  http://www.netflix.com/netflixfindyourvoice •  http://en.wikipedia.org/wiki/Collaborative_filtering