Beyond Explicit Reports: Comparing Data-Driven Approaches to Studying Underlying Dimensions of Music Preference

Jaehun Kim, Andrew M. Demetriou, Sandy Manolios, Cynthia C. S. Liem
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Abstract

Prior research from the field of music psychology has suggested that there are factors common to music preference beyond individual genres. Specifically, research has shown that self-reported ratings of preference for individual musical genres can be reduced to 4 or 5 dimensions, which in turn have been shown to correlate to relevant psychological constructs, such as personality. However, the number of dimensions emerging from multiple studies has varied despite the care taken in conducting such research. Data-driven approaches offer opportunities to further this line of research with actual listening data, at a scale and scope surpassing that of traditional psychological studies. Although listening data can be considered more direct and comprehensive evidence of listening preference, transforming this data into meaningful measurements is non-trivial. In the current paper, we report on investigations seeking to find interpretable underlying dimensions of music taste, using implicit large-scale listening data. Offering a critical reflection on potential researchers' degrees of freedom, we adopt an explicit systematic approach, investigating the impact of varying different parameters, analysis, and normalization techniques. More precisely, we consider various ways to extract listening preference information from two large, openly available datasets of music listening behavior, making use of principal component analysis and variational autoencoders to extract potential underlying dimensions. Results and implications are discussed in light of prior psychological theory, and the potential of user listening data to further research on music preference.
超越明确的报告:比较数据驱动的方法来研究音乐偏好的潜在维度
音乐心理学领域的先前研究表明,除了个人类型之外,音乐偏好还有一些共同的因素。具体来说,研究表明,对个人音乐流派的自我报告偏好评级可以减少到4或5个维度,这反过来又被证明与相关的心理结构(如人格)相关。然而,尽管在进行此类研究时采取了谨慎的态度,但从多项研究中得出的维度数量却各不相同。数据驱动的方法为用实际的听力数据进一步研究提供了机会,在规模和范围上超越了传统的心理学研究。虽然听力数据可以被认为是听力偏好的更直接和全面的证据,但将这些数据转化为有意义的测量结果并非微不足道。在本文中,我们报告了一项调查,旨在利用内隐的大规模听力数据找到音乐品味的可解释的潜在维度。提供对潜在研究人员自由度的批判性反思,我们采用明确的系统方法,调查不同参数,分析和归一化技术的影响。更准确地说,我们考虑了从两个大型的、公开可用的音乐聆听行为数据集中提取聆听偏好信息的各种方法,利用主成分分析和变分自编码器来提取潜在的潜在维度。本文从先验心理学理论的角度讨论了结果和意义,并对用户收听数据对进一步研究音乐偏好的潜力进行了讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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