个性计算与自然音乐聆听行为:比较音频和歌词偏好

IF 3.1 3区 心理学 Q1 PSYCHOLOGY, MULTIDISCIPLINARY
L. Sust, Clemens Stachl, Gayatri Kudchadker, M. Bühner, Ramona Schoedel
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引用次数: 3

摘要

长期以来,心理学和其他领域一直认为,个人的音乐偏好揭示了他们的个性特征。虽然最初的证据将自我报告的对广泛音乐风格的偏好与五大维度联系起来,但人们对日常音乐聆听行为以及反映这些个体差异的旋律和歌词的内在属性知之甚少。目前的研究(N = 330)提出了一种人格计算方法来填补这些空白,从智能手机的生态有效音乐收听记录中获得新的见解。我们通过Spotify的技术音频特征和通过自然语言处理获得的文本属性,通过播放歌曲的音频和歌词特征来量化参与者的音乐偏好。利用线性弹性网络和非线性随机森林模型,这些行为变量在领域和层面上预测了大五人格。样本外预测表现显示,在领域层面上,开放性与音乐聆听的关系最为密切(r = 0.25),其次是责任心(r = 0.13),而五大因素的几个方面也显示出小到中等的影响。暗示音频和歌词特征的增量价值,这两个音乐成分在预测开放性及其方面的模型中具有不同的信息,而歌词偏好在预测责任心维度方面发挥了更重要的作用。在这样做的过程中,模型中最具预测性的变量显示了个性和音乐偏好之间普遍的特征一致关系。这些发现有助于人格科学中音乐聆听累积理论的发展,并可能通过利用本文提出的计算框架的未来工作以多种方式扩展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Personality Computing With Naturalistic Music Listening Behavior: Comparing Audio and Lyrics Preferences
It is a long-held belief in psychology and beyond that individuals’ music preferences reveal information about their personality traits. While initial evidence relates self-reported preferences for broad musical styles to the Big Five dimensions, little is known about day-to-day music listening behavior and the intrinsic attributes of melodies and lyrics that reflect these individual differences. The present study (N = 330) proposes a personality computing approach to fill these gaps with new insights from ecologically valid music listening records from smartphones. We quantified participants’ music preferences via audio and lyrics characteristics of their played songs through technical audio features from Spotify and textual attributes obtained via natural language processing. Using linear elastic net and non-linear random forest models, these behavioral variables served to predict Big Five personality on domain and facet levels. Out-of-sample prediction performances revealed that – on the domain level – Openness was most strongly related to music listening (r = .25), followed by Conscientiousness (r = .13), while several facets of the Big Five also showed small to medium effects. Hinting at the incremental value of audio and lyrics characteristics, both musical components were differentially informative for models predicting Openness and its facets, whereas lyrics preferences played the more important role for predictions of Conscientiousness dimensions. In doing so, the models’ most predictive variables displayed generally trait-congruent relationships between personality and music preferences. These findings contribute to the development of a cumulative theory on music listening in personality science and may be extended in numerous ways by future work leveraging the computational framework proposed here.
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来源期刊
Collabra-Psychology
Collabra-Psychology PSYCHOLOGY, MULTIDISCIPLINARY-
CiteScore
3.60
自引率
4.00%
发文量
47
审稿时长
16 weeks
期刊介绍: Collabra: Psychology has 7 sections representing the broad field of psychology, and a highlighted focus area of “Methodology and Research Practice.” Are: Cognitive Psychology Social Psychology Personality Psychology Clinical Psychology Developmental Psychology Organizational Behavior Methodology and Research Practice.
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