Centre for Digital Music, Queen Mary University of London, London, United Kingdom.
ISI Foundation, Turin, Italy.
PLoS One. 2023 Nov 29;18(11):e0294402. doi: 10.1371/journal.pone.0294402. eCollection 2023.
Music is a fundamental element in every culture, serving as a universal means of expressing our emotions, feelings, and beliefs. This work investigates the link between our moral values and musical choices through lyrics and audio analyses. We align the psychometric scores of 1,480 participants to acoustics and lyrics features obtained from the top 5 songs of their preferred music artists from Facebook Page Likes. We employ a variety of lyric text processing techniques, including lexicon-based approaches and BERT-based embeddings, to identify each song's narrative, moral valence, attitude, and emotions. In addition, we extract both low- and high-level audio features to comprehend the encoded information in participants' musical choices and improve the moral inferences. We propose a Machine Learning approach and assess the predictive power of lyrical and acoustic features separately and in a multimodal framework for predicting moral values. Results indicate that lyrics and audio features from the artists people like inform us about their morality. Though the most predictive features vary per moral value, the models that utilised a combination of lyrics and audio characteristics were the most successful in predicting moral values, outperforming the models that only used basic features such as user demographics, the popularity of the artists, and the number of likes per user. Audio features boosted the accuracy in the prediction of empathy and equality compared to textual features, while the opposite happened for hierarchy and tradition, where higher prediction scores were driven by lyrical features. This demonstrates the importance of both lyrics and audio features in capturing moral values. The insights gained from our study have a broad range of potential uses, including customising the music experience to meet individual needs, music rehabilitation, or even effective communication campaign crafting.
音乐是每种文化的基本元素,是表达我们的情感、感受和信仰的通用方式。这项工作通过歌词和音频分析研究了我们的道德价值观和音乐选择之间的联系。我们将 1480 名参与者的心理测量评分与从 Facebook 页面点赞中他们最喜欢的音乐艺术家的前五首歌曲中获得的声学和歌词特征对齐。我们采用了多种歌词文本处理技术,包括基于词汇的方法和基于 BERT 的嵌入,以识别每首歌曲的叙述、道德价值、态度和情感。此外,我们还提取了低层次和高层次的音频特征,以理解参与者音乐选择中编码的信息,并提高道德推断能力。我们提出了一种机器学习方法,并分别评估了歌词和音频特征以及多模态框架对预测道德价值观的预测能力。结果表明,人们喜欢的艺术家的歌词和音频特征可以反映他们的道德观。虽然最具预测性的特征因每种道德价值观而异,但同时使用歌词和音频特征的模型在预测道德价值观方面最为成功,优于仅使用基本特征(如用户人口统计信息、艺术家的受欢迎程度和每个用户的点赞数量)的模型。与文本特征相比,音频特征在预测同理心和平等方面提高了准确性,而在等级和传统方面则相反,其中歌词特征驱动了更高的预测分数。这证明了歌词和音频特征在捕捉道德价值观方面的重要性。我们的研究结果具有广泛的潜在用途,包括根据个人需求定制音乐体验、音乐康复,甚至是制定有效的宣传活动。