ANALISIS KLASIFIKASI ARTIST MUSIC MENGGUNAKAN MODEL REGRESI LOGISTIK BINER DAN ANALISIS DISKRIMINAN

A. Dani, Vita Ratnasari, Ludia Ni’matuzzahroh, Igar Calveria Aviantholib, Raditya Novidianto, Narita Yuri Adrianingsih
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引用次数: 2

Abstract

Characteristics of a song are an important aspect that must be kept authentic by a singer. Using the Spotify API feature, we can extract the characteristics or elements of a song sung by a singer.  There are eight (8) elements that we can get from the extraction of a song, namely: Danceability, Energy, Loudness, Speechiness, Acousticness, Liveness, Valence, and Tempo. Based on the extraction results, we can label the music artist using the classification analysis method. In this study, the labels are music artists, namely Ariana Grande and Taylor Swift. This study aims to obtain the classification of music artist labels using binary logistic regression methods and discriminant analysis. The response variable used in this study is Artist Music (Y) which is categorized into two categories, namely Ariana Grande (Y=0) and Taylor Swift (Y=1). The data will be divided into training and testing data with the proportion of data 90:10 and 80:20. Based on the results of the analysis, the binary regression model that was built, with the proportion of training testing data that is 90:10 has a classification accuracy for data testing of 90.00%.
音乐艺术家分类分析使用二元物流回归模型和离散分析
歌曲的特点是一个重要的方面,必须保持真实的歌手。使用Spotify的API功能,我们可以提取歌手所唱歌曲的特征或元素。我们可以从一首歌曲的提取中得到八(8)个元素,即:舞蹈性、活力、响度、言语性、原声性、活泼性、价态性和节奏。根据提取结果,我们可以使用分类分析法对音乐艺术家进行分类。在这项研究中,标签是音乐艺术家,即爱莉安娜·格兰德和泰勒·斯威夫特。本研究旨在利用二元逻辑回归方法和判别分析,获得音乐艺人标签的分类。本研究使用的响应变量为Artist Music (Y),分为两类,分别是Ariana Grande (Y=0)和Taylor Swift (Y=1)。将数据分为训练数据和测试数据,数据比例分别为90:10和80:20。根据分析结果,建立的训练测试数据比例为90:10的二元回归模型对数据测试的分类准确率为90.00%。
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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