Analysis of Spotify's Audio Features Trends using Time Series Decomposition and Vector Autoregressive (VAR) Model

Daffa Adra Ghifari Machmudin, Mila Novita, Gianinna Ardaneswari
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Abstract

Streaming is the most popular music consumption method of the current times. As the biggest streaming platform based on subscriber number, Spotify stores miscellaneous information regarding the music in the platform, including audio features. Spotify’s audio features are descriptions of songs features in form of variables such as danceability, duration, and tempo. These features are accessible via Application Programming Interface (API). On the other hand, Spotify also publishes their own charts consisting of 200 most streamed songs on the platform (based on regions) which are updated daily. By combining Spotify’s song charts and the songs’ respective audio features, this research conducted analysis on musical trends using time series modelling. First, the combined data is decomposed to extract the trend features. Second, a Vector Autoregressive (VAR) model is built and followed by forecasting of the audio features. Lastly, the performance of forecasted values and the actual observations is evaluated. As a result, this research has proven that musical trends can be forecasted in the future for a short period by using VAR model with relatively low error.
利用时间序列分解和向量自回归 (VAR) 模型分析 Spotify 的音频特征趋势
流媒体是当前最流行的音乐消费方式。作为用户数量最大的流媒体平台,Spotify 在平台中存储了音乐的各种信息,包括音频特征。Spotify 的音频特征是以可跳性、持续时间和节奏等变量形式对歌曲特征的描述。这些功能可通过应用程序接口(API)访问。另一方面,Spotify 还发布了自己的排行榜,包括平台上流传最广的 200 首歌曲(基于地区),每天更新。通过结合 Spotify 的歌曲排行榜和歌曲各自的音频特征,本研究利用时间序列建模对音乐趋势进行了分析。首先,对组合数据进行分解以提取趋势特征。其次,建立向量自回归(VAR)模型,然后对音频特征进行预测。最后,对预测值和实际观测值的性能进行评估。研究结果证明,使用 VAR 模型可以在较短时间内预测音乐趋势,而且误差相对较小。
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