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Music discovery on the net
                          Barcamp3, Berlin
                             Petar Djekic




October 18th, 2008
From phonograph to widgets


                                                                               Widget
                                                                               Mobile
                                                                    Web         Web
                                                          PC          PC          PC
                                          Portable    Portable    Portable    Portable
                                TV            TV          TV          TV          TV
                             Car Audio    Car Audio Car Audio Car Audio Car Audio
                    Radio     Radio         Radio       Radio       Radio       Radio
 Phono              Phono     Phono      HiFi system HiFi system HiFi system HiFi system


  1890              1920      1930         1950        1980        1990        2000




Source: own, Wikipedia ’08
Yet still..

„iPod classic can                                          „There is are an average of
hold up to 30,000                                          700 songs stored on a U.S.
songs“                                                     music downloader’s
                                                           player.“




                                                           „Average MP3 player only
                                                           57% full“




 Source: Apple 2008, Forrester Research 2008, IPSOS 2006
Music Discovery                                                    4




 “The only bad thing about         “A wealth of information
 MySpace is that there             creates a poverty of
 are 100,000 bands and no          attention”
 filtering.
 I try to find the bands I         Herbert A. Simon, Nobel prize
                                   winning economist
 might like but often I just
 get tired of looking.”

 15 year old student, IFPI focus
 group research, July 2007
Music Discovery                             5




        Many places, similar technologies
Recommendation technologies: Overview


       Human behaviour: Recommendations are based on
        behaviour, e.g., Collaborative filtering using listening or
        purchase habits

       Human annotation: Recommendations are based on
        annotations and expertise, e.g., ratings, tags, classification
        into genres, editorial content

       Content analysis: Recommendations are based on
        characteristics of the content itself, e.g., sound density,
        vocals, tempo, sound color, instruments, volume, dynamics
„Freakomendations“: Variety




Source: audiobaba
„Freakomendations“: Manipulation




Source: Paul Lamere, last.fm
„Freakomendations“: Cold-start




 Source: iTunes Genius
„Freakomendations“: Relevance




Source: mufin.com
Recommendation technologies: Issues

     Relevance: How good does           Variety: Variety of
      the content suit my taste?          recommendations (Beatles-
      How about mood and                  problem); connection
      expectations?                       between variety and content
                                          available
     Scalability: Indexing of
      existing content libraries         Privacy: Who owns YOUR
      and new releases (cold-             data?
      starts)
                                         Explanation: Why was
     Objectivity: Manipulation of        something recommended?
      rankings, consistency of
                                         Portability: How about
      recommendations
                                          mobile devices, MP3
                                          players
Mash it up now! <resources>

Human annotation/behaviour

          MusicBrainz: similar artists, tags, meta data, CC / PD
           license

          Yahoo! Music: similarities, charts, ratings, meta data,
           REST webservice, max. 5000 queries/day

          Last.fm: similarities, tags, ratings, meta data, REST
           webservice, free for non-commercial use

Content analysis

          Echo.nest: sound analysis, recommendations, custom
           HTTP webservice,

          audiobaba: similarities, custom HTTP webservice, max. 1
           query/sec
Mash it up now! <resources>

Matching                          Full-track

      Identifier: MusicBrainz,               Youtube
       ISRC, All music guide
                                              Imeem Media
      Meta data: G’n’R,                       Platform, yahoo
       GunsNRoses, Guns N’
                                              Seeqpod, skreemr
       Roses…

      Acoustic fingerprints:                 Radio stream
       Standards?
Recommendations, again

  Books
  David Jennings (2006) Net, Blogs, and Rock‘n‘Roll
  David Huron (2008) Sweet Anticipation: Music and the Psychology of Expectation



  Papers
  Kim, J., and Belkin, N. J. (2002). Categories of music description and search terms and phrases used by non-music experts, http://
  ismir2002.ismir.net/proceedings/02-FP07-2.pdf
  Tintarev, N. (2007), A Survey of Explanations in Recommender Systems, http://www.csd.abdn.ac.uk/~ntintare/
  TintarevMasthoffICDE07.pdf
  Mobasher, B. et al (2007) Trustworthy Recommender Systems: An Analysis of Attack Models and Algorithm
  Robustness, http://maya.cs.depaul.edu/~mobasher/papers/mbbw-acmtoit-07.pdf



  Conferences
  The International Conferences on Music Information Retrieval and Related Activities, ISMIR, http://www.ismir.net/
  ACM Recommender Systems, RecSys, http://recsys.acm.org



  Blogs
  Duke Listens!, http://blogs.sun.com/plamere/
Thank you!
  polyano.de@gmail.com

       @polyano

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Music discovery on the net

  • 1. Music discovery on the net Barcamp3, Berlin Petar Djekic October 18th, 2008
  • 2. From phonograph to widgets Widget Mobile Web Web PC PC PC Portable Portable Portable Portable TV TV TV TV TV Car Audio Car Audio Car Audio Car Audio Car Audio Radio Radio Radio Radio Radio Radio Phono Phono Phono HiFi system HiFi system HiFi system HiFi system 1890 1920 1930 1950 1980 1990 2000 Source: own, Wikipedia ’08
  • 3. Yet still.. „iPod classic can „There is are an average of hold up to 30,000 700 songs stored on a U.S. songs“ music downloader’s player.“ „Average MP3 player only 57% full“ Source: Apple 2008, Forrester Research 2008, IPSOS 2006
  • 4. Music Discovery 4 “The only bad thing about “A wealth of information MySpace is that there creates a poverty of are 100,000 bands and no attention” filtering. I try to find the bands I Herbert A. Simon, Nobel prize winning economist might like but often I just get tired of looking.” 15 year old student, IFPI focus group research, July 2007
  • 5. Music Discovery 5 Many places, similar technologies
  • 6. Recommendation technologies: Overview   Human behaviour: Recommendations are based on behaviour, e.g., Collaborative filtering using listening or purchase habits   Human annotation: Recommendations are based on annotations and expertise, e.g., ratings, tags, classification into genres, editorial content   Content analysis: Recommendations are based on characteristics of the content itself, e.g., sound density, vocals, tempo, sound color, instruments, volume, dynamics
  • 11. Recommendation technologies: Issues   Relevance: How good does   Variety: Variety of the content suit my taste? recommendations (Beatles- How about mood and problem); connection expectations? between variety and content available   Scalability: Indexing of existing content libraries   Privacy: Who owns YOUR and new releases (cold- data? starts)   Explanation: Why was   Objectivity: Manipulation of something recommended? rankings, consistency of   Portability: How about recommendations mobile devices, MP3 players
  • 12. Mash it up now! <resources> Human annotation/behaviour   MusicBrainz: similar artists, tags, meta data, CC / PD license   Yahoo! Music: similarities, charts, ratings, meta data, REST webservice, max. 5000 queries/day   Last.fm: similarities, tags, ratings, meta data, REST webservice, free for non-commercial use Content analysis   Echo.nest: sound analysis, recommendations, custom HTTP webservice,   audiobaba: similarities, custom HTTP webservice, max. 1 query/sec
  • 13. Mash it up now! <resources> Matching Full-track   Identifier: MusicBrainz,   Youtube ISRC, All music guide   Imeem Media   Meta data: G’n’R, Platform, yahoo GunsNRoses, Guns N’   Seeqpod, skreemr Roses…   Acoustic fingerprints:   Radio stream Standards?
  • 14. Recommendations, again Books David Jennings (2006) Net, Blogs, and Rock‘n‘Roll David Huron (2008) Sweet Anticipation: Music and the Psychology of Expectation Papers Kim, J., and Belkin, N. J. (2002). Categories of music description and search terms and phrases used by non-music experts, http:// ismir2002.ismir.net/proceedings/02-FP07-2.pdf Tintarev, N. (2007), A Survey of Explanations in Recommender Systems, http://www.csd.abdn.ac.uk/~ntintare/ TintarevMasthoffICDE07.pdf Mobasher, B. et al (2007) Trustworthy Recommender Systems: An Analysis of Attack Models and Algorithm Robustness, http://maya.cs.depaul.edu/~mobasher/papers/mbbw-acmtoit-07.pdf Conferences The International Conferences on Music Information Retrieval and Related Activities, ISMIR, http://www.ismir.net/ ACM Recommender Systems, RecSys, http://recsys.acm.org Blogs Duke Listens!, http://blogs.sun.com/plamere/
  • 15. Thank you! polyano.de@gmail.com @polyano