Department of Computer Science and Engineering, University of California San Diego, La Jolla, CA 92093.
Department of Psychology, University of California San Diego, La Jolla, CA 92093.
Proc Natl Acad Sci U S A. 2020 Nov 24;117(47):29371-29380. doi: 10.1073/pnas.1912343117.
Humans readily form social impressions, such as attractiveness and trustworthiness, from a stranger's facial features. Understanding the provenance of these impressions has clear scientific importance and societal implications. Motivated by the efficient coding hypothesis of brain representation, as well as Claude Shannon's theoretical result that maximally efficient representational systems assign shorter codes to statistically more typical data (quantified as log likelihood), we suggest that social "liking" of faces increases with statistical typicality. Combining human behavioral data and computational modeling, we show that perceived attractiveness, trustworthiness, dominance, and valence of a face image linearly increase with its statistical typicality (log likelihood). We also show that statistical typicality can at least partially explain the role of symmetry in attractiveness perception. Additionally, by assuming that the brain focuses on a task-relevant subset of facial features and assessing log likelihood of a face using those features, our model can explain the "ugliness-in-averageness" effect found in social psychology, whereby otherwise attractive, intercategory faces diminish in attractiveness during a categorization task.
人们可以从陌生人的面部特征中迅速形成诸如吸引力和可信度等社会印象。了解这些印象的来源具有重要的科学意义和社会影响。受大脑表示的有效编码假说以及克劳德·香农的理论结果(即效率最高的表示系统将更典型的数据分配给更短的代码(用对数似然量化))的启发,我们提出,面部的社交“喜好”程度随着统计典型性的增加而增加。通过结合人类行为数据和计算建模,我们表明,对面部图像的感知吸引力、可信度、支配力和积极性与它的统计典型性(对数似然)呈线性关系。我们还表明,统计典型性至少可以部分解释对称性在吸引力感知中的作用。此外,通过假设大脑专注于面部特征的一个与任务相关的子集,并使用这些特征来评估面孔的对数似然,我们的模型可以解释社会心理学中发现的“丑陋中的平均性”效应,即,在分类任务中,原本有吸引力的跨类别面孔的吸引力会降低。