Research on music information retrieval algorithm based on deep learning

X. Yuan
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引用次数: 1

Abstract

With the exponential growth of various network resources, the use of search engine has become one of the most basic skills of everyone in today's society, and an efficient information retrieval model is also of more significance. The traditional text-based music information retrieval method can retrieve music data by inputting text information such as song name, composer, singer and album name. The content-based music information retrieval queries the target music through the input music melody information. In the actual music information retrieval scene, there is interaction between the user and the retrieval model. The user gives feedback on the retrieval results, and the retrieval model returns a new page of document according to this feedback. The existing ranking learning model regards ranking as a one-time process, ignores user feedback, and the ranking effect needs to be improved. With the increasing demand for digital music information and the continuous expansion of application fields based on massive music data sets, content-based music information retrieval method is attracting more and more researchers' attention.
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基于深度学习的音乐信息检索算法研究
随着各种网络资源的指数级增长,搜索引擎的使用已经成为当今社会每个人最基本的技能之一,一个高效的信息检索模型也就显得更为重要。传统的基于文本的音乐信息检索方法是通过输入歌曲名称、作曲家、歌手、专辑名称等文本信息来检索音乐数据。基于内容的音乐信息检索通过输入的音乐旋律信息查询目标音乐。在实际的音乐信息检索场景中,用户与检索模型之间存在交互。用户对检索结果给出反馈,检索模型根据该反馈返回一个新的文档页面。现有的排名学习模型将排名视为一次性过程,忽略用户反馈,排名效果有待提高。随着人们对数字音乐信息需求的不断增加以及基于海量音乐数据集的应用领域的不断拓展,基于内容的音乐信息检索方法受到越来越多研究者的关注。
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