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Music Emotion Maps in Arousal-Valence Space

机译:配价空间中的音乐情感图

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摘要

In this article we present the approach in which the detection of emotion is modeled by the pertinent regression problem. Conducting experiments required building a database, annotation of samples by music experts, construction of regressors, attribute selection, and analysis of selected musical compositions. We obtained a satisfactory correlation coefficient value for SVM for regression algorithm at 0.88 for arousal and 0.74 for valence. The result applying regressors are emotion maps of the musical compositions. They provide new knowledge about the distribution of emotions in musical compositions. They reveal new knowledge that had only been available to music experts until this point.
机译:在本文中,我们介绍了一种通过相关回归问题对情绪检测进行建模的方法。进行实验需要建立数据库,音乐专家对样本进行注释,回归器的构建,属性选择以及对选定音乐作品的分析。对于回归算法,我们为SVM获得了令人满意的相关系数值,唤醒系数为0.88,化合价为0.74。应用回归的结果是音乐作品的情感图。他们提供了有关音乐作品中情绪分布的新知识。他们揭示了直到现在为止只有音乐专家才可以使用的新知识。

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