Experienced Emotion
Research on experienced emotion focuses on understanding and modeling how humans experience, express, and respond to emotions, bridging the gap between psychological and computational perspectives. Current research emphasizes developing and evaluating computational models, often employing deep learning architectures like transformers (e.g., BERT, GPT) and convolutional neural networks, to analyze emotional expression in text, images, audio, and physiological data. This work is significant for advancing our understanding of human emotion and has practical applications in areas such as mental health support, personalized AI assistants, and content moderation.
Papers
EMOTION: Expressive Motion Sequence Generation for Humanoid Robots with In-Context Learning
Peide Huang, Yuhan Hu, Nataliya Nechyporenko, Daehwa Kim, Walter Talbott, Jian Zhang
Combining psychoanalysis and computer science: an empirical study of the relationship between emotions and the Lacanian discourses
Minas Gadalla, Sotiris Nikoletseas, José Roberto de A. Amazonas
Identification of emotions on Twitter during the 2022 electoral process in Colombia
Juan Jose Iguaran Fernandez, Juan Manuel Perez, German Rosati
Divine LLaMAs: Bias, Stereotypes, Stigmatization, and Emotion Representation of Religion in Large Language Models
Flor Miriam Plaza-del-Arco, Amanda Cercas Curry, Susanna Paoli, Alba Curry, Dirk Hovy