Publication

Predicting emotional response to visual stimuli, a machine learning approach

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Emotions are rich and complex experiences involving various behavioral and physiological responses. While many empirical studies have focused on discrete and dimensional representations of emotions, these representations do not fully reconcile with recent ...
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