In this paper, we report the first stable results on gender prediction via eye movements. We use a dataset with images of faces as stimuli and with a large number of 370 participants. Stability has two meanings for us: first that we are able to estimate the standard deviation (SD) of a single prediction experiment (it is around 4.1 %); this is achieved by varying the number of participants. And second, we are able to provide a mean accuracy with a very low standard error (SEM): our accuracy is 65.2 %, and the SEM is 0.80 %; this is achieved through many runs of randomly selecting training and test sets for the prediction. Our study shows that two particular classifiers achieve the best accuracies: Random Forests and Logistic Regression. Our results reconfirm previous findings that females are more biased towards the left eyes of the stimuli.
翻译:在本文中,我们通过眼睛运动来报告关于性别预测的第一个稳定结果。我们使用一组带有面部图像的数据集作为刺激,并有370名参与者。稳定有两个意义:首先,我们能够估计单一预测实验的标准偏差(SD)(约为4.1%);这是通过不同的参与者人数实现的。第二,我们能够以非常低的标准差错(SEM)提供一种平均准确性:我们的准确性是65.2%,而SEM是0.80 %;这是通过许多随机选择用于预测的培训和测试组实现的。我们的研究显示,两个特定的分类者获得了最佳的精度:随机森林和物流倒退。我们的结果再次证实了以前的调查结果,即女性对悬浮的左眼更偏向。