A facial recognition algorithm was used to extract face descriptors from carefully standardized images of 591 neutral faces taken in the laboratory setting. Face descriptors were entered into a cross-validated linear regression to predict participants' scores on a political orientation scale (Cronbach's alpha=.94) while controlling for age, gender, and ethnicity. The model's performance exceeded r=.20: much better than that of human raters and on par with how well job interviews predict job success, alcohol drives aggressiveness, or psychological therapy improves mental health. Moreover, the model derived from standardized images performed well (r=.12) in a sample of naturalistic images of 3,401 politicians from the U.S., UK, and Canada, suggesting that the associations between facial appearance and political orientation generalize beyond our sample. The analysis of facial features associated with political orientation revealed that conservatives had larger lower faces, although political orientation was only weakly associated with body mass index (BMI). The predictability of political orientation from standardized images has critical implications for privacy, regulation of facial recognition technology, as well as the understanding the origins and consequences of political orientation.
翻译:在实验室环境中,使用面部识别算法从591个中性面孔的精心标准化的图像中提取面部描述符。将面部描述符输入到交叉验证的线性回归中,以预测参与者在政治取向评分(Cronbach的α=.94)上的得分,同时控制年龄,性别和种族。模型的性能超过r=.20:比人类评分高得多,并且与面试预测工作成功,酒驾驶引发攻击行为,或心理疗法改善心理健康的预测能力相当。此外,从标准化图像中得出的模型在来自美国、英国和加拿大的3,401名政治家的自然图像样本中表现良好(r=.12),表明面部外观与政治取向之间的关联超越了我们的样本。从与政治取向相关的面部特征的分析表明,保守派具有更大的下颌,尽管政治取向与身体质量指数(BMI)的相关性较弱。从标准化图像中预测政治取向对隐私、面部识别技术的监管以及理解政治取向的起源和后果具有关键意义。