A generic self-learning emotional framework for machines
Metadatos
Mostrar el registro completo del ítemEditorial
Springer Nature
Materia
Emotions Emotional model Reinforcement learning
Fecha
2024-10-28Referencia bibliográfica
Hernández Marcos, A. & Ros Die, E. Sci Rep 14, 25858 (2024). [https://doi.org/10.1038/s41598-024-72817-x]
Patrocinador
Grant PID2022-140095NB-I00 funded by MCIN/AEI /10.13039/501100011033/ and FEDER Una manera de hacer EuropaResumen
In nature, intelligent living beings have developed emotions to modulate their behavior as a
fundamental evolutionary advantage. However, researchers seeking to endow machines with this
advantage lack a clear theory from cognitive neuroscience describing emotional elicitation from first
principles, namely, from raw observations to specific affects. As a result, they often rely on casespecific
solutions and arbitrary or hard-coded models that fail to generalize well to other agents
and tasks. Here we propose that emotions correspond to distinct temporal patterns perceived in
crucial values for living beings in their environment (like recent rewards, expected future rewards
or anticipated world states) and introduce a fully self-learning emotional framework for Artificial
Intelligence agents convincingly associating them with documented natural emotions. Applied
in a case study, an artificial neural network trained on unlabeled agent’s experiences successfully
learned and identified eight basic emotional patterns that are situationally coherent and reproduce
natural emotional dynamics. Validation through an emotional attribution survey, where human
observers rated their pleasure-arousal-dominance dimensions, showed high statistical agreement,
distinguishability, and strong alignment with experimental psychology accounts. We believe that the
framework’s generality and cross-disciplinary language defined, grounded on first principles from
Reinforcement Learning, may lay the foundations for further research and applications, leading us
toward emotional machines that think and act more like us.