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Explicit Content Detection in Music Lyrics Using Machine Learning

机译:使用机器学习的音乐歌词中的显式内容检测

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Music has serious effects on children's development. Music lyrics have become more violent and sexual over the years. However, the system for filtering explicit contents in music often does not work properly, not to mention that it takes a lot of time and effort to do it properly. In this study, we propose several machine learning models that automatically detect explicit contents in Korean lyrics and compare their performances. The proposed Bagging with selective vocabulary model outperformed not only the other competing models we designed, but also the filtering method that used the man-made profanity dictionary, which is a widely-used method to detect explicit contents in the industry. The proposed automated lyrics screening approach makes practical contributions to music industry, helping it significantly save time and effort for censoring harmful contents for the youths. The proposed approach is generalizable to other language settings as long as the same kinds of data used in the study are available.
机译:音乐严重影响儿童的成长。这些年来,音乐歌词变得更加暴力和性感。但是,用于过滤音乐中显式内容的系统通常无法正常工作,更不用说要花费大量时间和精力才能正确地进行过滤。在这项研究中,我们提出了几种机器学习模型,这些模型可以自动检测韩语歌词中的显式内容并比较它们的性能。提出的带选择性词汇的Bagging模型不仅优于我们设计的其他竞争模型,而且优于使用人工亵渎词典的过滤方法,该方法是检测行业中显式内容的一种广泛使用的方法。拟议的自动歌词筛选方法为音乐行业做出了实际贡献,帮助它大大节省了时间和精力,以检查青少年的有害内容。只要可以使用研究中使用的相同类型的数据,建议的方法就可以推广到其他语言设置。

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