“超越文字”:通过歌词连接音乐偏好和道德价值观

Vjosa Preniqi, Kyriaki Kalimeri, C. Saitis
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引用次数: 1

摘要

本研究通过对歌词进行文本分析,探讨音乐偏好与道德价值观之间的关系。从Facebook托管的应用程序中收集数据,我们将1,386名用户的心理测试分数与他们喜欢的音乐艺术家的前5首歌曲的歌词相结合,这些歌曲来自Facebook页面上的“喜欢”。我们提取了一组与每首歌的总体叙事、道德价、情感和情感相关的抒情特征。设计了一个机器学习框架来利用回归方法并评估抒情特征在推断道德价值观方面的预测能力。结果表明,人们喜欢的艺术家的热门歌曲的歌词会影响他们的道德。层级和传统美德的预测得分($.20 \leq r \leq .30$)高于共情和平等价值观($.08 \leq r \leq .11$),而基本人口变量在模型的可解释性中只占很小的一部分。这显示了音乐聆听行为的重要性,通过抒情偏好来评估,仅在获取道德价值观方面。我们讨论了技术和音乐的影响和可能的未来改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
"More Than Words": Linking Music Preferences and Moral Values Through Lyrics
This study explores the association between music preferences and moral values by applying text analysis techniques to lyrics. Harvesting data from a Facebook-hosted application, we align psychometric scores of 1,386 users to lyrics from the top 5 songs of their preferred music artists as emerged from Facebook Page Likes. We extract a set of lyrical features related to each song's overarching narrative, moral valence, sentiment, and emotion. A machine learning framework was designed to exploit regression approaches and evaluate the predictive power of lyrical features for inferring moral values. Results suggest that lyrics from top songs of artists people like inform their morality. Virtues of hierarchy and tradition achieve higher prediction scores ($.20 \leq r \leq .30$) than values of empathy and equality ($.08 \leq r \leq .11$), while basic demographic variables only account for a small part in the models' explainability. This shows the importance of music listening behaviours, as assessed via lyrical preferences, alone in capturing moral values. We discuss the technological and musicological implications and possible future improvements.
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