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Improving music auto-tagging with trigger-based context model

机译:使用基于触发器的上下文模型改善音乐自动标记

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Music auto-tagging has been an active research topic as it learns the relationship between the content of audio tracks and semantic tags such that users can query by both tags and audio segments without being troubled by the cold start problem. In this paper, we propose a new trigger-based context model to refine the existing content model based auto-tagging systems. The trigger based context model improves accruacy of weakly labeled tags in “Genre”, “Solo” and “Usage” by 10.63%, 10% and 26.43% respectively, which are usually poorly modeled due to lack of data in the content model based systems. Experiment results indicate that a combination of the content and context models outperforms the content based only auto-tagging system and the baseline Turnbull's MixHier model by 0.74% and 2.64% in average precision rate respectively.
机译:音乐自动标记一直是一个活跃的研究主题,因为它可以学习音轨内容和语义标签之间的关系,从而使用户可以同时通过标签和音频片段进行查询,而不会受到冷启动问题的困扰。在本文中,我们提出了一个新的基于触发器的上下文模型,以完善现有的基于内容模型的自动标记系统。基于触发器的上下文模型分别将“流派”,“独奏”和“用法”中标记较弱的标签的准确度分别提高了10.63%,10%和26.43%,由于基于内容模型的系统中缺少数据,因此建模效果通常较差。实验结果表明,内容模型和上下文模型的组合的平均准确率分别比仅基于自动标记系统和基线Turnbull的MixHier模型的内容分别高0.74%和2.64%。

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