Juggle: large-scale discovery in music recommendation

  • Authors:
  • Filipe Coelho;José Devezas;Cristina Ribeiro

  • Affiliations:
  • Universidade do Porto;Universidade do Porto;Universidade do Porto

  • Venue:
  • Proceedings of the 10th Conference on Open Research Areas in Information Retrieval
  • Year:
  • 2013

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Abstract

Today's offer of audio content exceeds the human capability of manually searching datasets with hundreds of songs, demanding automated tools capable of handling music recommendation when faced with large-scale collections. In this work, we address the playlist generation and song discovery tasks with large-scale datasets. It is possible to quickly obtain playlists and explore collections with example-based queries using audio features, lyrics and tags. We developed a music discovery prototype to demonstrate this content based approach. This demo is based on the Million Song Dataset, a large-scale collection of audio features and associated text data comprising almost 300 GB of information.