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Facial-Attractiveness Choices Are Predicted by Divisive Normalization

机译:面部吸引力的选择由除法归一化预测

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Do people appear more attractive or less attractive depending on the company they keep? A divisive-normalization accountin which representation of stimulus intensity is normalized (divided) by concurrent stimulus intensitiespredicts that choice preferences among options increase with the range of option values. In the first experiment reported here, I manipulated the range of attractiveness of the faces presented on each trial by varying the attractiveness of an undesirable distractor face that was presented simultaneously with two attractive targets, and participants were asked to choose the most attractive face. I used normalization models to predict the context dependence of preferences regarding facial attractiveness. The more unattractive the distractor, the more one of the targets was preferred over the other target, which suggests that divisive normalization (a potential canonical computation in the brain) influences social evaluations. I obtained the same result when I manipulated faces' averageness and participants chose the most average face. This finding suggests that divisive normalization is not restricted to value-based decisions (e.g., attractiveness). This new application to social evaluation of normalization, a classic theory, opens possibilities for predicting social decisions in naturalistic contexts such as advertising or dating.
机译:人们根据自己经营的公司而表现出更具吸引力还是吸引力减弱?除数归一化帐户可以通过并发刺激强度对刺激强度的表示进行归一化(划分),从而预测期权之间的选择偏好会随着期权价值范围的增加而增加。在这里报道的第一个实验中,我通过改变与两个有吸引力的目标同时出现的不受欢迎的干扰物面孔的吸引力来操纵每个试验中提出的面孔的吸引力范围,并要求参与者选择最有吸引力的面孔。我使用归一化模型来预测关于面部吸引力的偏好的上下文相关性。干扰力越弱,则一个目标比另一个目标越受青睐,这表明分裂规范化(大脑中潜在的规范计算)会影响社会评价。当我操纵人脸的平均性并且参与者选择了最平均的人脸时,我获得了相同的结果。该发现表明,划分标准化不限于基于价值的决策(例如,吸引力)。这种对规范化的社会评价的新应用是一种经典理论,为在广告或约会等自然主义语境中预测社会决策提供了可能性。

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