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Two Stages Song Subject Classification on Indonesian Song Based on Lyrics, Genre Artist

机译:基于歌词,流派和艺术家的印度尼西亚歌曲的两个阶段歌曲主题分类

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Music listeners have different interests in searching songs to listen to the song. They search songs based on artists, genres, and popular albums, besides some music listeners search for songs based on the theme/subject of the song. Searching songs based on themes/subjects is the most favored by listeners of music. This has been proven in online surveys in the previous studies. Basically, many music applications are able to categorize songs by genres, artists and albums. This is reasonable because in the audio file there is information about the artists, genres and albums so that music applications can automatically create playlists. However, to categorize songs based on themes/subjects requires a process to find out the theme/subject of the song. Machine learning is one of the solutions to categorize songs based on themes/subjects as has been done in previous research using lyrics as the object of research. In this study, an automatic classification system based on the subject using lyric, genre & artist data sources was4 created. As a result, it is found that the system performance with the addition of genre & artist information outperformed compared to using lyrics only. This study also tries to apply the two stages in the classification process and compares it to the single flat classification method implemented in previous research. The results indicate that the classification process with two stages classification method outperformed compared to single flat classification method both in the system performance and the efficiency of running time of the classification process. The system performance produced in this study using the Na?ve Bayes method is able to produce an average value of 94.03% accuracy, 71.19% Precision, Recall 64.42%, and F1-Measure 67.85%.
机译:音乐监听器在搜索歌曲中有不同的兴趣来聆听歌曲。除了一些音乐听众之外,他们将根据艺术家,流派和流行专辑搜索歌曲,除了一些音乐听众,根据歌曲的主题搜索歌曲。根据主题/主题搜索歌曲是音乐别听者最受欢迎的。这已在前面研究中的在线调查证明。基本上,许多音乐应用程序能够通过流派,艺术家和专辑进行分类歌曲。这是合理的,因为在音频文件中有关于艺术家,流派和专辑的信息,以便音乐应用程序可以自动创建播放列表。但是,要根据主题/主题对歌曲进行分类需要一个过程来找出歌曲的主题/主题。机器学习是根据在以前的研究中使用歌词作为研究对象的研究,根据主题/主题对歌曲进行分类的解决方案之一。在本研究中,使用抒情群,流派和艺术家数据来源的基于主题的自动分类系统4。结果,发现系统性能随着仅使用歌词的使用而添加了类型和艺术家信息。本研究还试图在分类过程中应用两个阶段,并将其与先前研究中实施的单个平整分类方法进行比较。结果表明,在系统性能和分类过程的运行时间效率下,具有两个阶段分类方法的分类过程优于单个平坦分类方法。本研究中生产的系统性能使用Na'Ve Bayes方法能够产生94.03%的平均值,精度为71.19%,召回64.42%,F1测量67.85%。

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