Music classification is a music information retrieval (MIR) task to classify music items to labels such as genre, mood, and instruments. It is also closely related to other concepts such as music similarity and musical preference. In this tutorial, we put our focus on two directions - the recent training schemes beyond supervised learning and the successful application of music classification models. The target audience for this web book is researchers and practitioners who are interested in state-of-the-art music classification research and building real-world applications. We assume the audience is familiar with the basic machine learning concepts. In this book, we present three lectures as follows: 1. Music classification overview: Task definition, applications, existing approaches, datasets, 2. Beyond supervised learning: Semi- and self-supervised learning for music classification, 3. Towards real-world applications: Less-discussed, yet important research issues in practice.
翻译:音乐分类是一项音乐信息检索(MIR)任务,将音乐项目分类为诸如基因、情绪和乐器等标签,它也与音乐相似和乐乐偏好等其他概念密切相关。在这个辅导课中,我们把重点放在两个方向上,即除了监督学习和成功应用音乐分类模型之外的最新培训计划;本网络书的目标受众是关心最先进的音乐分类研究和建立现实世界应用的研究人员和从业人员。我们假定听众熟悉基本机器学习概念。我们在本书中介绍三个讲座如下:1. 音乐分类概览:任务定义、应用、现有方法、数据集、超越监督学习:音乐分类的半监督和自我监督学习;3. 实现现实世界应用:较少讨论,但实际中重要的研究问题。