Published February 7, 2023 | Version 1.0
Conference paper Open

Music Playlist Title Generation Using Artist Information

Description

Automatically generating or captioning music playlist titles given a set of tracks is of significant interest in music streaming services as customized playlists are widely used in personalized music recommendation, and well-composed text titles attract users and help their music discovery. We present an encoder-decoder model that generates a playlist title from a sequence of music tracks. While previous work takes track IDs as tokenized input for playlist title generation, we use artist IDs corresponding to the tracks to mitigate the issue from the long-tail distribution of tracks included in the playlist dataset. Also, we introduce a chronological data split method to deal with newly-released tracks in real-world scenarios. Comparing the track IDs and artist IDs as input sequences, we show that the artist-based approach significantly enhances the performance in terms of word overlap, semantic relevance, and diversity.

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References

  • Ferraro, A.; Kim, Y.; Lee, S.; Kim, B.; Jo, N.; Lim, S.; Lim, S.; Jang, J.; Kim, S.; Serra, X.; et al. 2021. Melon playlist dataset: A public dataset for audio-based playlist generation and music tagging. In Proceedings of the International Conference on Acoustics, Speech and Signal Processing (ICASSP).
  • Chen, C.-W.; Lamere, P.; Schedl, M.; and Zamani, H. 2018. Recsys challenge 2018: Automatic music playlist continuation. In Proceedings of the 12th ACM Conference on Recommender Systems, 527–528.