Department of Political Science, Århus University, Aarhus, Denmark.
Department of Psychology, University of Southern Denmark, Odense, Denmark.
Sci Rep. 2023 Mar 31;13(1):5257. doi: 10.1038/s41598-023-31796-1.
Deep learning techniques can use public data such as facial photographs to predict sensitive personal information, but little is known about what information contributes to the predictive success of these techniques. This lack of knowledge limits both the public's ability to protect against revealing unintended information as well as the scientific utility of deep learning results. We combine convolutional neural networks, heat maps, facial expression coding, and classification of identifiable features such as masculinity and attractiveness in our study of political ideology in 3323 Danes. Predictive accuracy from the neural network was 61% in each gender. Model-predicted ideology correlated with aspects of both facial expressions (happiness vs neutrality) and morphology (specifically, attractiveness in females). Heat maps highlighted the informativeness of areas both on and off the face, pointing to methodological refinements and the need for future research to better understand the significance of certain facial areas.
深度学习技术可以利用公共数据(如面部照片)来预测敏感的个人信息,但人们对这些技术的预测成功所依赖的信息知之甚少。这种知识的缺乏既限制了公众防止透露意外信息的能力,也限制了深度学习结果的科学用途。我们在对 3323 名丹麦人的政治意识形态研究中结合了卷积神经网络、热图、面部表情编码以及男性气质和吸引力等可识别特征的分类,来研究这个问题。在每个性别中,神经网络的预测准确率为 61%。模型预测的意识形态与面部表情(快乐与中性)和形态(特别是女性的吸引力)的各个方面相关。热图突出了面部内外信息丰富的区域,这指向了方法上的改进和未来研究的需要,以更好地理解某些面部区域的意义。