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ragamAI: A Network Based Recommender System to Arrange a Indian Classical Music Concert

机译:Ragamai:基于网络的推荐系统,可以安排印度古典音乐音乐会

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South Indian classical music (Carnatic music) is best consumed through live concerts. A carnatic recital requires meticulous planning accounting for several parameters like the performers' repertoire, composition variety, musical versatility, thematic structure, the recital's arrangement, etc. to ensure that the audience have a comprehensive listening experience. In this work, we present ragamAI a novel machine learning framework that utilizes the tonic nuances and musical structures in the carnatic music to generate a concert recital that melodically captures the entire range in an octave. Utilizing the underlying idea of playlist and session-based recommender models, the proposed model studies the mathematical structure present in past concerts and recommends relevant items for the playlist/concert. ragamAI ensembles recommendations given by multiple models to learn user idea and past preference of sequences in concerts to extract recommendations. Our experiments on a vast collection of concert show that our model performs 25%-50% better than baseline models. ragamAI's applications are two-fold. 1) it will assist musicians to customize their performance with the necessary variety required to sustain the interest of the audience for the entirety of the concert 2) it will generate carefully curated lists of south Indian classical music so that the listener can discover the wide range of melody that the musical system can offer.
机译:南印度古典音乐(音乐卡纳提克)最好是通过现场音乐会消耗。一个卡纳提克演奏会需要几个参数,如表演者的曲目,组成各种各样,音乐的多功能性,主题结构,演奏会的安排等精心策划的会计,以确保观众有一个全面的聆听体验。在这项工作中,我们提出ragamAI一种新颖的机器学习框架,其利用补药细微差别和音乐结构在卡纳提克音乐以生成音乐会演奏旋律即捕获一个八度的整个范围。利用播放列表的基本思想基于会话的推荐模型,该模型的研究目前在过去演唱会的数学结构,并建议对播放列表/演唱会相关的项目。 ragamAI歌舞团由多个机型给予及时了解用户的想法和过去的音乐会,以提取建议序列的优先建议。我们在演唱会表演一个广阔的收集实验,我们的模型进行25%-50%,比基线模型好。 ragamAI的应用是双重的。 1),它会帮助音乐家来定制自己的表现了必要的各种要求,以维持观众的音乐会2的全部利息),它会产生精心策划的南印度古典音乐的列表,以便听者可以发现大范围旋律是音乐系统可提供。

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