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Semantic models of musical mood: Comparison between crowd-sourced and curated editorial tags

机译:音乐情绪的语义模型:人群来源和策划的社论标签之间的比较

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Social media services such as Last.fm provide crowd-sourced mood tags which are a rich but often noisy source of information. In contrast, editorial annotations from production music libraries are meant to be incisive in nature. We compare the efficiency of these two data sources in capturing semantic information on mood expressed by music. First, a semantic computing technique devised for mood-related tags in large datasets is applied to Last.fm and I Like Music (ILM) corpora separately (250,000 tracks each). The resulting semantic estimates are then correlated with listener ratings of arousal, valence and tension. High correlations (Spearman's rho) are found between the track positions in the dimensional mood spaces and listener ratings using both data sources (0.60 < rs < 0.70). In addition, the use of curated editorial data provides a statistically significant improvement compared to crowd-sourced data for predicting moods perceived in music.
机译:诸如Last.fm之类的社交媒体服务提供了众包的情绪标签,这些标签是丰富但通常嘈杂的信息源。相反,生产音乐库中的编辑注释本质上是敏锐的。我们比较了这两个数据源在捕获音乐表达的情绪语义信息方面的效率。首先,针对大型数据集中与情绪相关的标签设计的语义计算技术分别应用于Last.fm和I Like Music(ILM)语料库(每条250,000条音轨)。然后,将所得的语义估计与唤醒,价态和紧张度的收听者评级相关联。使用这两个数据源(0.60 s <0.70),在维度情绪空间中的曲目位置与收听者评分之间发现高度相关性(Spearman的rho)。此外,与用于预测音乐中的情绪的人群来源数据相比,精选社论数据的使用在统计上有显着改善。

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