Vienna Cognitive Science Hub, University of Vienna, Kolingasse 14-16, 1090, Vienna, Austria.
Department of Neurology, Center of Expertise for Parkinson and Movement Disorders, Donders Institute for Brain, Cognition and Behavior, Radboud University Medical Centre, Nijmegen, The Netherlands.
Sci Rep. 2024 Jul 10;14(1):15948. doi: 10.1038/s41598-024-65088-z.
In empirical art research, understanding how viewers judge visual artworks as beautiful is often explored through the study of attributes-specific inherent characteristics or artwork features such as color, complexity, and emotional expressiveness. These attributes form the basis for subjective evaluations, including the judgment of beauty. Building on this conceptual framework, our study examines the beauty judgments of 54 Western artworks made by native Japanese and German speakers, utilizing an extreme randomized trees model-a data-driven machine learning approach-to investigate cross-cultural differences in evaluation behavior. Our analysis of 17 attributes revealed that visual harmony, color variety, valence, and complexity significantly influenced beauty judgments across both cultural cohorts. Notably, preferences for complexity diverged significantly: while the native Japanese speakers found simpler artworks as more beautiful, the native German speakers evaluated more complex artworks as more beautiful. Further cultural distinctions were observed: for the native German speakers, emotional expressiveness was a significant factor, whereas for the native Japanese speakers, attributes such as brushwork, color world, and saturation were more impactful. Our findings illuminate the nuanced role that cultural context plays in shaping aesthetic judgments and demonstrate the utility of machine learning in unravelling these complex dynamics. This research not only advances our understanding of how beauty is judged in visual art-considering self-evaluated attributes-across different cultures but also underscores the potential of machine learning to enhance our comprehension of the aesthetic evaluation of visual artworks.
在实证艺术研究中,理解观众如何将视觉艺术品评判为美丽,通常通过研究属性特定的固有特征或艺术品特征来探索,例如颜色、复杂性和情感表现力。这些属性构成了主观评价的基础,包括对美的判断。基于这个概念框架,我们的研究考察了母语为日语和德语的人对 54 件西方艺术品的美感判断,使用极端随机树模型——一种基于数据的机器学习方法——来调查评价行为中的跨文化差异。我们对 17 个属性的分析表明,视觉和谐、颜色多样性、效价和复杂性在两个文化群体的美感判断中都有显著影响。值得注意的是,对复杂性的偏好存在显著差异:母语为日语的人认为更简单的艺术品更美丽,而母语为德语的人则认为更复杂的艺术品更美丽。还观察到了进一步的文化差异:对于母语为德语的人来说,情感表达是一个重要因素,而对于母语为日语的人来说,笔触、色彩世界和饱和度等属性则更具影响力。我们的发现阐明了文化背景在塑造审美判断方面所起的细微作用,并展示了机器学习在揭示这些复杂动态方面的效用。这项研究不仅增进了我们对不同文化中视觉艺术审美判断的理解——考虑到自我评估的属性——还强调了机器学习增强我们对视觉艺术品审美评价的理解的潜力。