Jam with Jamendo: Querying a Large Music Collection by Chords from a Learner's Perspective

Nowadays, a number of online music databases are available under Creative Commons licenses (e.g. Jamendo, ccMixter). Typically, it is possible to navigate and play their content through search interfaces based on metadata and file-wide tags. However, because this music is largely unknown, additional methods of discovery need to be explored. In this paper, we focus on a use case for music learners. We present a web app prototype that allows novice and expert musicians to discover songs in Jamendo's music collection by specifying a set of chords. Its purpose is to provide a more pleasurable practice experience by suggesting novel songs to play along with, instead of practising isolated chords or with the same song over and over again. To handle less chord-oriented songs and transcription errors that inevitably arise from the automatic chord estimation used to populate the database, query results are ranked according to a computational confidence measure. In order to assess the validity of the confidence ranked system, we conducted a small pilot user study to assess its usefulness. Drawing on those preliminary findings, we identify some design recommendations for future applications of music learning and music search engines focusing on the user experience when interacting with sound.

[1]  György Fazekas,et al.  Music recommendation for music learning: Hotttabs, a multimedia guitar tutor , 2011 .

[2]  Jakob Nielsen,et al.  A mathematical model of the finding of usability problems , 1993, INTERCHI.

[3]  Marc Leman,et al.  Content-Based Music Information Retrieval: Current Directions and Future Challenges , 2008, Proceedings of the IEEE.

[4]  L. Miles,et al.  2000 , 2000, RDH.

[5]  György Fazekas,et al.  Confidence Measures and Their Applications in Music Labelling Systems Based on Hidden Markov Models , 2017, ISMIR.

[6]  E. Tronci,et al.  1996 , 1997, Affair of the Heart.

[7]  György Fazekas,et al.  Recommending songs to music learners based on chord content , 2018 .

[8]  Xavier Serra,et al.  Tempo Estimation for Music Loops and a Simple Confidence Measure , 2016, ISMIR.

[9]  Lawrence Lessig,et al.  Free Culture: How Big Media Uses Technology and the Law to Lock Down Culture and Control Creativity , 2004 .

[10]  Anna Xambó,et al.  Exploring Real-time Visualisations to Support Chord Learning with a Large Music Collection , 2018 .

[11]  Jyh-Shing Roger Jang,et al.  Super MBox: an efficient/effective content-based music retrieval system , 2001, MULTIMEDIA '01.

[12]  Daniel Wolff,et al.  Big Chord Data Extraction and Mining , 2014 .

[13]  Peter Knees,et al.  A music search engine built upon audio-based and web-based similarity measures , 2007, SIGIR.

[14]  Chad West Motivating Music Students , 2013 .

[15]  Douglas Keislar,et al.  Content-Based Classification, Search, and Retrieval of Audio , 1996, IEEE Multim..

[16]  Mark D. Plumbley,et al.  Audio Commons: bringing Creative Commons audio content to the creative industries , 2016 .

[17]  José Pedro Magalhães,et al.  Chordify: Chord transcription for the masses , 2014 .

[18]  A. Colman,et al.  Optimal number of response categories in rating scales: reliability, validity, discriminating power, and respondent preferences. , 2000, Acta psychologica.

[19]  F. Wilcoxon Individual Comparisons by Ranking Methods , 1945 .