Corpus ID: 203642203

Analyzing the Spotify Top 200 Through a Point Process Lens

@article{Harris2019AnalyzingTS,
  title={Analyzing the Spotify Top 200 Through a Point Process Lens},
  author={Michelangelo Harris and Brian Liu and Cean Park and Ravi Ramireddy and Gloria Ren and Max Ren and Shangdi Yu and A. Daw and Jamol Pender},
  journal={ArXiv},
  year={2019},
  volume={abs/1910.01445}
}
Every generation throws a hero up the pop charts. For the current generation, one of the most relevant pop charts is the Spotify Top 200. Spotify is the world's largest music streaming service and the Top 200 is a daily list of the platform's 200 most streamed songs. In this paper, we analyze a data set collected from over 20 months of these rankings. Via exploratory data analysis, we investigate the popularity, rarity, and longevity of songs on the Top 200 and we construct a stochastic process… Expand

References

SHOWING 1-10 OF 23 REFERENCES
Local Music Event Recommendation with Long Tail Artists
Evaluating Recommender System Algorithms for Generating Local Music Playlists
Spectra of some self-exciting and mutually exciting point processes
Using personalized radio to enhance local music discovery
The Queue-Hawkes Process: Ephemeral Self-Excitement
A dynamic contagion process
Marked point processes in discrete time
The long tail.
  • J. Avery
  • Medicine
  • Journal of the Tennessee Medical Association
  • 1995
Introduction to Probability Models.
...
1
2
3
...