Neuromorphic Deep Learning Machines

Article, Preprint English OPEN
Neftci, E ; Augustine, C ; Paul, S ; Detorakis, G (2017)
  • Publisher: eScholarship, University of California
  • Subject: Computer Science - Artificial Intelligence | Computer Science - Neural and Evolutionary Computing | cs.NE | cs.AI
    arxiv: Quantitative Biology::Neurons and Cognition

An ongoing challenge in neuromorphic computing is to devise general and computationally efficient models of inference and learning which are compatible with the spatial and temporal constraints of the brain. One increasingly popular and successful approach is to take in... View more
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