An Adaptive Model for Dynamics of Desiring and Feeling Based on Hebbian Learning

نویسندگان

  • Tibor Bosse
  • Mark Hoogendoorn
  • Zulfiqar Ali Memon
  • Jan Treur
  • Muhammad Umair
چکیده

Within cognitive models, desires are often considered as functional concepts that play a role in efficient focusing of behaviour. In practice a desire often goes hand in hand with having certain feelings. In this paper by adopting neurological theories a model is introduced incorporating both cognitive and affective aspects in the dynamics of desiring and feeling. Example simulations are presented, and both a mathematical and logical analysis is included.

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تاریخ انتشار 2010