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A Differential Topological Model for Olfactory Learning and Representation

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 نشر من قبل Jack Cook
 تاريخ النشر 2020
  مجال البحث علم الأحياء
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 تأليف Jack A. Cook




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This thesis is designed to be a self-contained exposition of the neurobiological and mathematical aspects of sensory perception, memory, and learning with a bias towards olfaction. The final chapters introduce a new approach to modeling focusing more on the geometry of the system as opposed to element wise dynamics. Additionally, we construct an organism independent model for olfactory processing: something which is currently missing from the literature.



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