Impact of Listening Behavior on Music Recommendation

Activity: Talk or presentationPoster presentationunknown

Description

The next generation of music recommendation systems will be increasingly intelligent and likely take into account user behavior for more personalized recommendations. In this work we consider user behavior when making recommendations with features extracted from a user’s history of listening events. We investigate the impact of listener’s behavior by considering features such as play counts, “mainstreaminess”, and diversity in music taste on the performance of various music recommendation approaches. The underlying dataset has been collected by crawling social media (specifically Twitter) for listening events. Each user’s listening behavior is characterized into a three dimensional feature space consisting of play count, “mainstreaminess” (i.e. the degree to which the observed user listens to currently popular artists), and diversity (i.e. the diversity of genres the observed user listens to). Drawing subsets of the 28,000 users in our dataset, according to these three dimensions, we evaluate whether these dimensions influence figures of merit of various music recommendation approaches, in particular, collaborative filtering (CF) and CF enhanced by cultural information such as users located in the same city or country.
Period29 Oct 2014
Event titleunbekannt/unknown
Event typeConference
LocationTaiwan, Province of ChinaShow on map

Fields of science

  • 202002 Audiovisual media
  • 102 Computer Sciences
  • 102001 Artificial intelligence
  • 102015 Information systems
  • 102003 Image processing

JKU Focus areas

  • Computation in Informatics and Mathematics
  • Engineering and Natural Sciences (in general)