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  1. Linear Representation of Emotions in Whole Persons by Combining Facial and Bodily Expressions in the Extrastriate Body Area.Xiaoli Yang, Junhai Xu, Linjing Cao, Xianglin Li, Peiyuan Wang, Bin Wang & Baolin Liu - 2018 - Frontiers in Human Neuroscience 11.
  • Lesion Mapping the Four-Factor Structure of Emotional Intelligence.Joachim T. Operskalski, Erick J. Paul, Roberto Colom, Aron K. Barbey & Jordan Grafman - 2015 - Frontiers in Human Neuroscience 9.
  • Support Vector Machines and Affective Science.Chris H. Miller, Matthew D. Sacchet & Ian H. Gotlib - 2020 - Emotion Review 12 (4):297-308.
    Support vector machines are being used increasingly in affective science as a data-driven classification method and feature reduction technique. Whereas traditional statistical methods typically compare group averages on selected variables, SVMs use a predictive algorithm to learn multivariate patterns that optimally discriminate between groups. In this review, we provide a framework for understanding the methods of SVM-based analyses and summarize the findings of seminal studies that use SVMs for classification or data reduction in the behavioral and neural study of emotion (...)
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  • Multivariate Pattern Classification of Facial Expressions Based on Large-Scale Functional Connectivity.Yin Liang, Baolin Liu, Xianglin Li & Peiyuan Wang - 2018 - Frontiers in Human Neuroscience 12.