Research in social psychology has shown that people's biased, subjective judgments about another's personality based solely on their appearance are not predictive of their actual personality traits. But researchers and companies often utilize computer vision models to predict similarly subjective personality attributes such as "employability." We seek to determine whether state-of-the-art, black box face processing technology can learn human-like appearance biases. With features extracted with FaceNet, a widely used face recognition framework, we train a transfer learning model on human subjects' first impressions of personality traits in other faces as measured by social psychologists. We find that features extracted with FaceNet can be used to predict human appearance bias scores for deliberately manipulated faces but not for randomly generated faces scored by humans. Additionally, in contrast to work with human biases in social psychology, the model does not find a significant signal correlating politicians' vote shares with perceived competence bias. With Local Interpretable Model-Agnostic Explanations (LIME), we provide several explanations for this discrepancy. Our results suggest that some signals of appearance bias documented in social psychology are not embedded by the machine learning techniques we investigate. We shed light on the ways in which appearance bias could be embedded in face processing technology and cast further doubt on the practice of predicting subjective traits based on appearances.
翻译:社会心理学的研究显示,人们仅仅凭外表对他人个性进行偏向和主观的主观判断,并不预知其真实的个性特征。但研究人员和公司经常使用计算机视觉模型预测类似主观的个性属性特征,如“就业能力”。我们试图确定最先进的黑盒面部处理技术能否学习人性貌相似的外貌偏差。用广泛使用的面部识别框架FaceNet的特征,我们训练了人类主体的转移学习模型,其第一印象是社会心理学家测量的其他面孔的个性特征。我们发现,用FaceNet提取的特征可以用来预测人为被故意操纵的脸部而不是人类随机生成的脸部的外貌偏差分。此外,与人类社会心理学中的偏差相比,该模型并不发现一个与政治家的选票和认知能力偏差有关系的重要信号。用本地易懂的模型-认知解释(LIME)来解释这一差异。我们的研究结果表明,在社会心理学中记录的一些外貌偏差迹象没有被机器学习技术所嵌入。我们调查的外观的外观的外观的外观的外观预测方式。