PsychologyPsychological Research
Naturalistic multimodal emotion data with deep learning can advance the theoretical understanding of emotion
T. Angkasirisan
Can AI finally settle what emotions are? This paper explores how big-data and deep learning can integrate subjective experience, context, brain–body physiological signals and expressive behaviour to map emotions in multidimensional spaces—offering fresh insights into debates about innate vs learned categories and emotional coherence. Research conducted by Thanakorn Angkasirisan.
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