主题建模用户对歌曲的解读,为音乐数字图书馆的主题访问提供信息

Kahyun Choi, Jin Ha Lee, C. Willis, J. S. Downie
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引用次数: 8

摘要

将主题元数据分配给音乐对于组织和访问数字音乐收藏很有用。由于大规模音乐收藏的手工主题标注是劳动密集型的,因此首选自动标注方法。主题建模算法可用于从适当的文本源自动识别潜在主题。候选文本来源(如歌词)通常过于诗意,导致质量较低的主题。用户对歌词的解读提供了另一种来源。在本文中,我们提出了一个自动主题发现系统,从网络挖掘的用户生成的歌曲解释,以提供主题访问音乐数字图书馆。我们还提出并评估过滤技术来识别高质量的主题。在我们的实验中,我们使用了存在于百万歌曲数据集和songmeans.com中的24,436首流行歌曲。使用潜狄利克雷分配(Latent Dirichlet Allocation, LDA)生成主题模型。为了评估学习主题的一致性,我们根据维基百科的出现情况计算每个主题中排名前十位的单词的归一化点互信息(NPMI)。最后,我们使用422首歌曲的子集来评估结果主题,这些歌曲已手动分配给六个主题。使用该系统,71%的人工分配的受试者被正确识别。这些结果表明,歌曲解读的主题建模是一种很有前途的音乐数字图书馆主题元数据丰富方法。它也暗示了提供类似的诗歌和小说收藏的途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Topic Modeling Users' Interpretations of Songs to Inform Subject Access in Music Digital Libraries
The assignment of subject metadata to music is useful for organizing and accessing digital music collections. Since manual subject annotation of large-scale music collections is labor-intensive, automatic methods are preferred. Topic modeling algorithms can be used to automatically identify latent topics from appropriate text sources. Candidate text sources such as song lyrics are often too poetic, resulting in lower-quality topics. Users' interpretations of song lyrics provide an alternative source. In this paper, we propose an automatic topic discovery system from web-mined user-generated interpretations of songs to provide subject access to a music digital library. We also propose and evaluate filtering techniques to identify high-quality topics. In our experiments, we use 24,436 popular songs that exist in both the Million Song Dataset and songmeanings.com. Topic models are generated using Latent Dirichlet Allocation (LDA). To evaluate the coherence of learned topics, we calculate the Normalized Pointwise Mutual Information (NPMI) of the top ten words in each topic based on occurrences in Wikipedia. Finally, we evaluate the resulting topics using a subset of 422 songs that have been manually assigned to six subjects. Using this system, 71% of the manually assigned subjects were correctly identified. These results demonstrate that topic modeling of song interpretations is a promising method for subject metadata enrichment in music digital libraries. It also has implications for affording similar access to collections of poetry and fiction.
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