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On-Chart Success Dynamics Of Popular Songs

Author

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  • SEUNGKYU SHIN

    (Graduate School of Culture Technology and BK21 Plus Programme for Content Science, Korea Advanced Institute of Science & Technology, Daejeon 34141, Republic of Korea)

  • JUYONG PARK

    (Graduate School of Culture Technology and BK21 Plus Programme for Content Science, Korea Advanced Institute of Science & Technology, Daejeon 34141, Republic of Korea†Sainsbury Laboratory, University of Cambridge, CB4 1YE, UK)

Abstract

In the modern era where highly-commodified cultural products compete heavily for mass consumption, finding the principles behind the complex process of how successful, “hit” products emerge remains a vital scientific goal that requires an interdisciplinary approach. Here, we present a framework for tracing the cycle of prosperity-and-decline of a product to find insights into influential and potent factors that determine its success. As a rapid, high-throughput indicator of the preference of the public, popularity charts have emerged as a useful information source for finding the market performance patterns of products over time, which we call the on-chart life trajectories that show how the products enter the chart, fare inside it, and eventually exit from it. We propose quantitative parameters to characterize a life trajectory, and analyze a large-scale data set of nearly 7,000 songs from Gaon Chart, a major weekly Korean Pop (K-Pop) chart that covers a span of six years. We find that a significant role is played by nonmusical extrinsic factors such as the established fan base of the artist and the might of production companies in the on-chart success of songs, strongly indicative of the commodified nature of modern cultural products. We also review a possible mathematical model of this phenomenon, and discuss several nontrivial yet intriguing trajectories that we call the “Late Bloomers” and the “Re-entrants” that appear to be strongly driven by serendipitous exposure on mass media and the changes of seasons.

Suggested Citation

  • Seungkyu Shin & Juyong Park, 2018. "On-Chart Success Dynamics Of Popular Songs," Advances in Complex Systems (ACS), World Scientific Publishing Co. Pte. Ltd., vol. 21(03n04), pages 1-18, May.
  • Handle: RePEc:wsi:acsxxx:v:21:y:2018:i:03n04:n:s021952591850008x
    DOI: 10.1142/S021952591850008X
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    References listed on IDEAS

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