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Music mood classification based on lyrical analysis of Hindi songs using Latent Dirichlet Allocation

机译:基于潜在歌曲歌曲抒情分析的音乐情绪分类

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For over a decade now, due to the introduction of UTF-8 encoding, the digitization of Hindi content has increased rapidly because of which Hindi-music has accomplished popularity on the web. The focus is to identify the emotion, a person is experiencing while listening to a song track. The aim of this research work is to analyze the lyrics of Hindi-language based songs, in order to detect the mood of the listener. We used unigram and term-frequency as the main features. The songs were reduced to a level where only relevant words will be used for mood-detection. We employ unsupervised machine learning namely topic-modeling (Latent Dirichlet Allocation model) for mining the mood out of every song in the corpus. We created our own dataset of 1900 songs consisting of Bollywood tracks, bhajans (spiritual prayers) and ghazals. A mood taxonomy is used to distinguish songs into Happy or Sad. Data is applied to LDA model to discover the hidden emotions within each song. At the end of experimentation, we compare the results with manually pre-annotated dataset for validation purpose and observe good results.
机译:几十多年来,由于引入了UTF-8编码,印地语内容的数字化迅速增加,因为其中印地语 - 音乐在网络上实现了普及。重点是识别情绪,一个人在听歌曲轨道时经历。这项研究工作的目的是分析基于印度语言的歌曲的歌词,以检测听众的情绪。我们使用UNIGRAM和术语频率作为主要功能。这些歌曲减少到一个只有相关单词将用于情绪检测的水平。我们采用无监督的机器学习即主题建模(潜在的Dirichlet分配模型),用于在语料库中挖掘每首歌的情绪。我们创建了由1900首歌曲的数据集,包括宝莱坞轨道,Bhajans(精神祈祷)和Ghazals。情绪分类学用于区分歌曲幸福或悲伤。数据应用于LDA模型,以发现每首歌中的隐藏情绪。在实验结束时,我们将结果与手动预注释的数据集进行了比较,用于验证目的并观察良好的结果。

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