基于聚类方法的韩国流行歌曲相似度分析

Hendry Wijaya, R. Oetama
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引用次数: 2

摘要

流行音乐的发展趋势,流行音乐是人们要求最高的音乐类型,其独特的特点使其具有吸引力,从而成为歌曲流行的一个因素。从3月22日开始,根据谷歌趋势的发展,韩国歌曲(K-Pop)击败本土流行音乐成为热门歌曲类型,这是由歌曲的特点引起的,原因很多。所以这些因素是通过歌曲的相似性来寻找的。由于计算机在基于声音预测歌曲相似度方面的局限性,因此使用分组算法(即KMeans Clustering和Self-Organized Map)来预测歌曲相似度的模型首先从学习从Spotify获得的K-Pop歌曲特征开始,直到它们被分成几个组。对K-pop歌曲的每一个聚类进行分析,得出K-pop歌曲的特征因素,并对每个聚类进行分析。因此,一般来说,大多数K-pop歌曲都是充满活力,响亮,喜欢跳舞的歌曲。根据分析结果,由于K-Means优于SOM,因此将它们分成4组,有2对聚类,每对聚类在节奏和情绪描述方面彼此相似。其中k-pop歌曲的因素是通过对一般特征和基于每个集群的特征的解释来表示的。
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Song Similarity Analysis With Clustering Method On Korean Pop Song
Trend about the growth of music with the genre of pop, which is the most demanding genre by people, with the attraction that comes from the characteristics that make it unique, so that it becomes a factor in the popularity of the song. Since March 22, 2020, Korean songs or K-Pop have become a popular song genre, beating local pop music based on developments from Google Trends, many factors cause the popularity of the song genre, which comes from characteristics of the song. So these factors are sought through the song’s similarity. Due to the limitations of computers in predicting the song’s similarity-based on sound, so the model created to predict the song’s similarity using a grouping algorithm, those are KMeans Clustering and Self-Organized Map, began by learning the K-Pop songs characteristics obtained from Spotify until they were split into several groups. with each character that is suitable for each group, the factors of the characteristics of the K-pop song are obtained from the results of the analysis on each cluster of the K-pop songs. Thus, generally, the majority of K-pop songs are songs that are energetic, loud, and like to be danceable. Based on the results of the analysis by splitting them into 4 groups using K-Means because it is better than SOM, there are 2 pairs of clusters, each of which has similarities to each other in terms of tempo and mood descriptions. Where the factors of k-pop songs are represented by an explanation of the characteristics both in general and based on each cluster.
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