首页> 外文会议>International Conference on Ubiquitous Information Management and Communication >A Novel Approach to Music Genre Classification using Natural Language Processing and Spark
【24h】

A Novel Approach to Music Genre Classification using Natural Language Processing and Spark

机译:基于自然语言处理和Spark的音乐流派分类的新方法

获取原文

摘要

With the advent of digitized music, many online streaming companies such as Spotify have capitalized on a listener’s need for a common stream platform. An essential component of such a platform is the recommender systems that suggest the constituent user base, related tracks, albums and artists. In order to sustain such a recommender system, labeling data, to indicate which genre it belongs to is essential. Most recent academic publications that deal with music genre classification focus on the use of deep neural networks developed and applied within the music genre classification domain. This paper attempts to use some of the highly sophisticated techniques, such as Hierarchical Attention Networks that exist within the text classification domain in order to classify tracks of different genres. In order to do this, the music is first separated into different tracks (drums, vocals, bass and accompaniment) and converted into symbolic text data. Due to the sophistication of the distributed machine learning system present in this paper, it is capable of classifying contemporary genres with impressive accuracy, when comparing the results with that of competing classifiers. It is also argued that through the use text classification, the expert knowledge which musicians and people involved with musicological techniques, can be attracted to improving recommender systems within the music information retrieval research domain.
机译:随着数字音乐的问世,诸如Spotify之类的许多在线流媒体公司已经利用了听众对通用流媒体平台的需求。这种平台的基本组成部分是推荐系统,可为组成用户群,相关曲目,专辑和艺术家提供建议。为了维持这种推荐系统,标记数据以指示其属于哪个流派是必不可少的。有关音乐流派分类的最新学术出版物集中在对音乐流派分类领域中开发和应用的深度神经网络的使用上。本文尝试使用一些高度复杂的技术,例如文本分类域内存在的分层注意力网络,以对不同体裁的曲目进行分类。为此,首先将音乐分为不同的音轨(鼓,人声,贝司和伴奏),然后将其转换为符号文本数据。由于本文中存在的分布式机器学习系统的先进性,当将结果与竞争分类器的结果进行比较时,它能够以令人印象深刻的准确性对现代体裁进行分类。也有人认为,通过使用文本分类,可以吸引音乐家和从事音乐学技术的人所掌握的专业知识,以改进音乐信息检索研究领域内的推荐系统。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号