%0 Conference Proceedings %T Predicting Dominance Judgements Automatically: A Machine Learning Approach. %A Mario Rojas %A David Masip %A Jordi Vitria %B IEEE International Workshop on Social Behavior Analysis %D 2011 %@ 978-1-4244-9140-7 %F Mario Rojas2011 %O OR;MV %O exported from refbase (http://refbase.cvc.uab.es/show.php?record=1760), last updated on Wed, 28 Jul 2021 10:11:45 +0200 %X The amount of multimodal devices that surround us is growing everyday. In this context, human interaction and communication have become a focus of attention and a hot topic of research. A crucial element in human relations is the evaluation of individuals with respect to facial traits, what is called a first impression. Studies based on appearance have suggested that personality can be expressed by appearance and the observer may use such information to form judgments. In the context of rapid facial evaluation, certain personality traits seem to have a more pronounced effect on the relations and perceptions inside groups. The perception of dominance has been shown to be an active part of social roles at different stages of life, and even play a part in mate selection. The aim of this paper is to study to what extent this information is learnable from the point of view of computer science. Specifically we intend to determine if judgments of dominance can be learned by machine learning techniques. We implement two different descriptors in order to assess this. The first is the histogram of oriented gradients (HOG), and the second is a probabilistic appearance descriptor based on the frequencies of grouped binary tests. State of the art classification rules validate the performance of both descriptors, with respect to the prediction task. Experimental results show that machine learning techniques can predict judgments of dominance rather accurately (accuracies up to 90%) and that the HOG descriptor may characterize appropriately the information necessary for such task. %U http://dx.doi.org/10.1109/FG.2011.5771377 %P 939-944