Classification of Music Genres using Feature Selection and Hyperparameter Tuning

Rahul Singhal, S. Srivatsan, Priyabrata Panda
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引用次数: 2

Abstract

The ability of music to spread joy and excitement across lives, makes it widely acknowledged as the human race's universal language. The phrase "music genre" is frequently used to group several musical styles together as following a shared custom or set of guidelines. According to their unique preferences, people now make playlists based on particular musical genres. Due to the determination and extraction of appropriate audio elements, music genre identification is regarded as a challenging task. Music information retrieval, which extracts meaningful information from music, is one of several real - world applications of machine learning. The objective of this paper is to efficiently categorise songs into various genres based on their attributes using various machine learning approaches. To enhance the outcomes, appropriate feature engineering and data pre-processing techniques have been performed. Finally, using suitable performance assessment measures, the output from each model has been compared. Compared to other machine learning algorithms, Random Forest along with efficient feature selection and hyperparameter tuning has produced better results in classifying music genres.
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基于特征选择和超参数调谐的音乐类型分类
音乐在生活中传播快乐和兴奋的能力,使它被广泛认为是人类的通用语言。“音乐流派”这个短语经常被用来将几种音乐风格组合在一起,以遵循共同的习惯或一套指导方针。根据他们独特的喜好,人们现在根据特定的音乐类型制作播放列表。音乐类型识别是一项具有挑战性的任务,因为需要确定和提取合适的音频元素。音乐信息检索,即从音乐中提取有意义的信息,是机器学习在现实世界中的应用之一。本文的目标是使用各种机器学习方法根据歌曲的属性有效地将歌曲分类为各种类型。为了提高结果,进行了适当的特征工程和数据预处理技术。最后,采用合适的绩效评估指标,对各模型的输出结果进行了比较。与其他机器学习算法相比,随机森林以及高效的特征选择和超参数调谐在音乐类型分类方面产生了更好的结果。
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