你快乐,我们温柔:个体特征和语言对情绪标签和分类的影响

Juan Sebastián Gómez Cañón, Estefanía Cano, P. Herrera, E. Gómez
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引用次数: 12

摘要

用情感标签标记音乐节选可能会导致模糊和矛盾的练习。这种主观性纠缠了几个高级的音乐描述任务,当建立的计算模型在“基本事实”的基础上产生预测时。在本研究中,我们以语言为主要特征,调查了流行音乐和摇滚音乐(主要是欧美风格)中情感感知与听者个人特征之间的关系。我们的目标是了解歌词理解对音乐情感感知的影响,并利用这些知识来改进音乐情感识别(MER)模型。我们系统地分析了22个音乐片段的超过30K个注释,以评估个体差异对一致性的影响,即Krippendorff系数。我们根据听众的熟悉程度、偏好、歌词理解程度和音乐成熟度,利用个人特征形成基于群体的注释。最后,我们以两种方法研究了基于组的注释:(1)使用流形学习算法和无监督聚类来评估注释之间的相似性;(2)通过训练具有不同“基本事实”的分类模型来分析它们的性能。我们的研究结果表明,a)应用更广泛的分类法分类和b)使用基于语言的多标签、基于组的注释可以对MER模型有益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Joyful for you and tender for us: the influence of individual characteristics and language on emotion labeling and classification
Tagging a musical excerpt with an emotion label may result in a vague and ambivalent exercise. This subjectivity entangles several high-level music description tasks when the computational models built to address them produce predictions on the basis of a "ground truth". In this study, we investigate the relationship between emotions perceived in pop and rock music (mainly in Euro-American styles) and personal characteristics from the listener, using language as a key feature. Our goal is to understand the influence of lyrics comprehension on music emotion perception and use this knowledge to improve Music Emotion Recognition (MER) models. We systematically analyze over 30K annotations of 22 musical fragments to assess the impact of individual differences on agreement, as defined by Krippendorff's coefficient. We employ personal characteristics to form group-based annotations by assembling ratings with respect to listeners' familiarity, preference, lyrics comprehension, and music sophistication. Finally, we study our group-based annotations in a two-fold approach: (1) assessing the similarity within annotations using manifold learning algorithms and unsupervised clustering, and (2) analyzing their performance by training classification models with diverse "ground truths". Our results suggest that a) applying a broader categorization of taxonomies and b) using multi-label, group-based annotations based on language, can be beneficial for MER models.
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