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Automated Facial Trait Judgment and Election Outcome Prediction: Social Dimensions of Face

机译:自动化的面部特征判断和选举结果预测:面孔的社会维度

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The human face is a primary medium of human communication and a prominent source of information used to infer various attributes. In this paper, we study a fully automated system that can infer the perceived traits of a person from his face -- social dimensions, such as "intelligence," "honesty," and "competence" -- and how those traits can be used to predict the outcomes of real-world social events that involve long-term commitments, such as political elections, job hires, and marriage engagements. To this end, we propose a hierarchical model for enduring traits inferred from faces, incorporating high-level perceptions and intermediate-level attributes. We show that our trained model can successfully classify the outcomes of two important political events, only using the photographs of politicians' faces. Firstly, it classifies the winners of a series of recent U. S. elections with the accuracy of 67.9% (Governors) and 65.5% (Senators). We also reveal that the different political offices require different types of preferred traits. Secondly, our model can categorize the political party affiliations of politicians, i.e., Democrats vs. Republicans, with the accuracy of 62.6% (male) and 60.1% (female). To the best of our knowledge, our paper is the first to use automated visual trait analysis to predict the outcomes of real-world social events. This approach is more scalable and objective than the prior behavioral studies, and opens for a range of new applications.
机译:人脸是人类交流的主要媒介,也是用于推断各种属性的重要信息来源。在本文中,我们研究了一种完全自动化的系统,该系统可以从一个人的脸部推断出其感知的特质-社会维度,例如“智力”,“诚实”和“能力”-以及如何使用这些特质预测现实世界中涉及长期承诺的社会事件的结果,例如政治选举,工作雇用和订婚。为此,我们提出了一种从面孔推断出的持久特征的层次模型,其中包含了高级感知和中级属性。我们表明,仅使用政客的面孔照片,我们训练有素的模型就可以成功地对两个重要政治事件的结果进行分类。首先,它以67.9%(州长)和65.5%(参议员)的准确性对最近一系列美国大选的获胜者进行分类。我们还揭示出,不同的政治部门需要不同类型的优先特征。其次,我们的模型可以对政客的政党隶属关系进行分类,即民主派与共和党派,准确度分别为62.6%(男性)和60.1%(女性)。据我们所知,我们的论文是第一篇使用自动视觉特征分析来预测现实世界中社会事件的结果的论文。这种方法比以前的行为研究更具可扩展性和客观性,并为一系列新应用打开了大门。

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