Institute of Neuroscience and Psychology.
Department of Psychology.
J Exp Psychol Hum Percept Perform. 2019 Dec;45(12):1589-1595. doi: 10.1037/xhp0000685. Epub 2019 Sep 26.
Facial attractiveness plays a critical role in social interaction, influencing many different social outcomes. However, the factors that influence facial attractiveness judgments remain relatively poorly understood. Here, we used a sample of 594 young adult female face images to compare the performance of existing theory-driven models of facial attractiveness and a data-driven (i.e., theory-neutral) model. Our data-driven model and a theory-driven model including various traits commonly studied in facial attractiveness research (asymmetry, averageness, sexual dimorphism, body mass index, and representational sparseness) performed similarly well. By contrast, univariate theory-driven models performed relatively poorly. These results (a) highlight the utility of data driven models of facial attractiveness and (b) suggest that theory-driven research on facial attractiveness would benefit from greater adoption of multivariate approaches, rather than the univariate approaches that they currently almost exclusively employ. (PsycINFO Database Record (c) 2019 APA, all rights reserved).
面部吸引力在社交互动中起着至关重要的作用,影响着许多不同的社交结果。然而,影响面部吸引力判断的因素仍知之甚少。在这里,我们使用了 594 张年轻成年女性面部图像的样本,比较了现有的基于理论的面部吸引力模型和基于数据的(即理论中立的)模型的性能。我们的数据驱动模型和一个包括各种在面部吸引力研究中常见特征(不对称性、平均性、性别二态性、体重指数和代表性稀疏性)的理论驱动模型表现相当出色。相比之下,单变量理论驱动模型的表现相对较差。这些结果(a)突出了面部吸引力数据驱动模型的实用性,(b)表明理论驱动的面部吸引力研究将受益于更多地采用多元方法,而不是他们目前几乎专门采用的单变量方法。(PsycINFO 数据库记录(c)2019 APA,保留所有权利)。