Predictive Models for Popularity of Solo and Group Singers in Spotify Using Decision Tree

Green Arther Sandag, A. Manueke
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引用次数: 3

Abstract

Technology has revolutionized our world over the years, and music is one of them. Spotify had become one of the music streaming applications that offers the latest songs in every year. Users can download Spotify from Play Store, App Store, and the official website. Spotify is a music streaming platform that provides a Freemium service, which means it is available for free use and a paid premium. Users can browse the most famous artists or songs easily according to their ratings. The artist, lyric, and some of the audio features have a significant impact on making the song's popularity. The purpose of this research is to predict a soloist or group singers using a decision tree algorithm. We used weighted by information gain method to determine the most crucial feature in processing singers' popularity. Our model will help the solo singer, group singers, and song composers make their songs accessible. The best performance result is the Decision Tree Algorithm with an Accuracy of 89.5% on cross-validation and 92.3% on independent data.
使用决策树预测Spotify中独奏和组合歌手的受欢迎程度
多年来,科技已经彻底改变了我们的世界,音乐就是其中之一。Spotify已经成为每年提供最新歌曲的音乐流媒体应用程序之一。用户可以从Play Store、App Store和官方网站下载Spotify。Spotify是一个提供免费增值服务的音乐流媒体平台,这意味着它可以免费使用,也可以付费使用。用户可以根据他们的评分轻松浏览最著名的艺术家或歌曲。艺术家、歌词和一些音频特征对这首歌的受欢迎程度有重大影响。本研究的目的是使用决策树算法来预测独唱或组合歌手。我们采用加权信息增益法来确定歌手知名度处理中最关键的特征。我们的模型将帮助独唱歌手、组合歌手和歌曲作曲家使他们的歌曲易于理解。决策树算法在交叉验证上的准确率为89.5%,在独立数据上的准确率为92.3%。
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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