Abstract

People spontaneously infer other people’s psychology from faces, encompassing inferences of their affective states, cognitive states, and stable traits such as personality. These judgments are known to be often invalid, but nonetheless bias many social decisions. Their importance and ubiquity have made them popular targets for automated prediction using deep convolutional neural networks (DCNNs). Here, we investigated the applicability of this approach: how well does it generalize, and what biases does it introduce? We compared three distinct sets of features (from a face identification DCNN, an object recognition DCNN, and using facial geometry), and tested their prediction across multiple out-of-sample datasets. Across judgments and datasets, features from both pre-trained DCNNs provided better predictions than did facial geometry. However, predictions using object recognition DCNN features were not robust to superficial cues (e.g., color and hair style). Importantly, predictions using face identification DCNN features were not specific: models trained to predict one social judgment (e.g., trustworthiness) also significantly predicted other social judgments (e.g., femininity and criminal), and at an even higher accuracy in some cases than predicting the judgment of interest (e.g., trustworthiness). Models trained to predict affective states (e.g., happy) also significantly predicted judgments of stable traits (e.g., sociable), and vice versa. Our analysis pipeline not only provides a flexible and efficient framework for predicting affective and social judgments from faces but also highlights the dangers of such automated predictions: correlated but unintended judgments can drive the predictions of the intended judgments.

Highlights

  • People rapidly and spontaneously make judgments about unfamiliar others’ social attributes based on their faces, such as forming an impression that someone looks beautiful, trustworthy, or happy (Engell et al, 2007; Sutherland et al, 2018; Willis & Todorov, 2006)

  • To investigate how well the predictions of these linear regression models with different feature spaces generalized across faces, raters, and social attributes, we tested the models on multiple out-of-sample datasets

  • We examined the generalizability, robustness, and specificity of a recent popular modeling approach for automatically predicting social judgments made by human perceivers from faces

Read more

Summary

Introduction

People rapidly and spontaneously make judgments about unfamiliar others’ social attributes based on their faces, such as forming an impression that someone looks beautiful, trustworthy, or happy (Engell et al, 2007; Sutherland et al, 2018; Willis & Todorov, 2006). By and large, these judgments are either known to be invalid or are of unknown. Handling Editor: Rachael Jack validity, since the ground truth of how people really feel and what personality they have is generally impossible to infer merely from looking at their faces (Todorov, 2017) These social judgments have ubiquitous and major consequences in everyday life. These judgments can show large individual differences and context effects: are they

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call