Music Intelligence: Granular Data and Prediction of Top Ten Hit Songs

Posted: 21 May 2020

See all articles by JooHee Oh

JooHee Oh

Handong Global University; Massachusetts Institute of Technology (MIT) - Management Science Administration

Date Written: April 25, 2020

Abstract

In the music market, superstars significantly dominate the market share, while predicting the top hit songs is notoriously difficult. The music intelligence technology, retrieving and utilizing granular acoustic features of songs, provides opportunities to improve the prediction of top hit songs. Using data on 6,209 unique songs that appeared in the weekly Billboard Hot 100 charts from 1998 to 2016, especially acoustic features provided by Spotify, we investigate empirically how the top-10-hit-songs likelihood prediction is improved by acoustic features. We find that some acoustic features (e.g., danceability and happiness) significantly improve the prediction accuracy of the top-10-hit-songs probability. These results suggest that the granular data, provided by the music intelligence technology, carries a substantial predictive value in the era of online music streaming.

Suggested Citation

Oh, JooHee, Music Intelligence: Granular Data and Prediction of Top Ten Hit Songs (April 25, 2020). Available at SSRN: https://ssrn.com/abstract=3585176 or http://dx.doi.org/10.2139/ssrn.3585176

Joohee Oh (Contact Author)

Handong Global University ( email )

Pohang City, Kyung-buk 791-940
Korea, Republic of (South Korea)

Massachusetts Institute of Technology (MIT) - Management Science Administration ( email )

E53-350, 30 Wadsworth Street
Cambridge, MA 02142
United States

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