Unveiling the melodic matrix: exploring genre-and-audio dynamics in the digital music popularity using machine learning techniques

IF 3.6 3区 管理学 Q2 BUSINESS
Jurui Zhang, Shan Yu, Raymond Liu, Guang-Xin Xie, Leon Zurawicki
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引用次数: 0

Abstract

Purpose

This paper aims to explore factors contributing to music popularity using machine learning approaches.

Design/methodology/approach

A dataset comprising 204,853 songs from Spotify was used for analysis. The popularity of a song was predicted using predictive machine learning models, with the results showing the superiority of the random forest model across key performance metrics.

Findings

The analysis identifies crucial genre and audio features influencing music popularity. Additionally, genre specific analysis reveals that the impact of music features on music popularity varies across different genres.

Practical implications

The findings offer valuable insights for music artists, digital marketers and music platform researchers to understand and focus on the most impactful music features that drive the success of digital music, to devise more targeted marketing strategies and tactics based on popularity predictions, and more effectively capitalize on popular songs in this digital streaming age.

Originality/value

While previous research has explored different factors that may contribute to the popularity of music, this study makes a pioneering effort as the first to consider the intricate interplay between genre and audio features in predicting digital music popularity.

揭开旋律矩阵的面纱:利用机器学习技术探索数字音乐流行的流派和音频动态
目的本文旨在利用机器学习方法探索音乐流行的因素。设计/方法/途径分析使用了由 Spotify 中 204,853 首歌曲组成的数据集。使用预测性机器学习模型预测歌曲的受欢迎程度,结果显示随机森林模型在关键性能指标上更胜一筹。研究结果分析确定了影响音乐受欢迎程度的关键流派和音频特征。实践意义研究结果为音乐艺术家、数字营销人员和音乐平台研究人员提供了宝贵的见解,有助于他们了解和关注推动数字音乐成功的最具影响力的音乐特征,根据流行度预测制定更有针对性的营销战略和策略,并在数字流媒体时代更有效地利用流行歌曲。原创性/价值虽然以往的研究探讨了可能导致音乐流行的不同因素,但本研究首次考虑了流派和音频特征之间在预测数字音乐流行度方面错综复杂的相互作用,是一项开创性的研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
8.00
自引率
9.10%
发文量
64
期刊介绍: Marketing Intelligence & Planning (MIP) facilitates communication between researchers and practitioners, providing the users of research with a wealth of robust and relevant information. At a time when some journals are losing their relevance to industry and practical requirements, MIP successfully offers a bridge between academic and practitioner thinking, while retaining a high level of scientific rigour.
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