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Music intelligence: Granular data and prediction of top ten hit songs

机译:音乐情报:粒度数据和前十歌曲的预测

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摘要

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 6209 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, happiness, and some metrics of timbre and pitch) significantly improve the model?s ability to predict 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.
机译:在音乐市场中,超级巨星显着主导了市场份额,同时预测顶部击中歌曲是众所周知的。 音乐智能技术,检索和利用粒子的歌曲声学特征,提供了改善顶部击中歌曲预测的机会。 在1998年至2016年的每周广告牌热量100图中出现的6209个独特歌曲,尤其是Spotify提供的声学功能,我们通过声学特征来调查顶级10-HIN歌曲似然预测。 我们发现一些声学特征(例如,Dancebaility,Happiness,以及Timbre和Titp的一些指标)显着提高了预测前10个命中歌曲概率的模型的能力。 这些结果表明,由音乐智能技术提供的粒度数据,在线音乐流的时代提供了大量的预测价值。

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