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Artificial neural networks / Statistical classification / Electrical engineering / Neuroscience / Computational neuroscience / MNIST database / Support vector machine / Neuromorphic engineering / TrueNorth / SyNAPSE / Neuron / Synaptic weight
Date: 2015-07-01 20:19:56
Artificial neural networks
Statistical classification
Electrical engineering
Neuroscience
Computational neuroscience
MNIST database
Support vector machine
Neuromorphic engineering
TrueNorth
SyNAPSE
Neuron
Synaptic weight

Energy-efficient neuromorphic classifiers Daniel Mart´ı ∗ † , Mattia Rigotti ‡ † Mingoo Seok § and Stefano Fusi †

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Source URL: arxiv.org

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