完全基于标签的音乐类型分类

Chao Zhen, Jieping Xu
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引用次数: 6

摘要

音乐类型自动分类作为音乐信息检索系统的基础和关键组成部分,是一个具有挑战性的问题。依赖于低级音频特征的方法可能无法获得令人满意的结果。近年来,社会标签作为一种提供网络资源信息的重要方式出现了。在本文中,我们感兴趣的是另一个方面,即如何仅依赖于可用的标签数据进行自动音乐类型分类。基于从Last抓取的社会标签(包括music-tag和artist-tag)的两种分类方法。FM在我们的工作中得到了发展。首先,利用生成概率模型潜狄利克雷分配(Latent Dirichlet Allocation, LDA)对音乐标签进行分析。然后,我们可以计算每个标签属于每种音乐类型的概率。第二种方法的出发点是,音乐艺术家往往与音乐类型联系更紧密。因此,我们可以计算艺术家标签之间的相似度来推断音乐属于哪种类型。最后,我们的实验结果证明了使用标签对音乐类型进行准确分类的好处。
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Solely Tag-Based Music Genre Classification
As a fundamental and critical component of music information retrieval (MIR) systems, automatically classifying music by genre is a challenging problem. The approaches depending on low-level audio features may not be able to obtain satisfactory results. In recent years, the social tags have emerged as an important way to provide information about resources on the Web. In this paper we are interested in another aspect, namely how perform automatic music genre classification solely depending on the available tag data. Two classification methods based on the social tags (including music-tag and artist-tag) which crawled from Last. fm are developed in our work. The first one, we use the generative probabilistic model Latent Dirichlet Allocation (LDA) to analyze the music-tag. Then, we can compute the probability of every tag belonging to each music genre. The starting point of the second method is that music’s artist is often associated with music genres more closely. Therefore, we can calculate the similarity between the artist-tags to infer which genre the music belongs to. At last, our experimental results demonstrate the benefit of using tags for accurate music genre classification.
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