Tightly Integrated Deep Learning And Symbolic Programming On A Single Neuromorphic Chip

2017 IEEE INTERNATIONAL SYMPOSIUM ON CIRCUITS AND SYSTEMS (ISCAS)(2017)

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摘要
This work integrates deep learning and symbolic programming paradigms into a unified method for deploying applications to a neuromorphic system. The approach removes the need for coordination among disjoint co-processors by embedding both types entirely on a neuromorphic processor. This integration provides a flexible approach for using each technique where it performs best. A single neuromorphic solution can seamlessly deploy neural networks for classifying sensor-driven noisy data obtained from the environment alongside programmed symbolic logic to processes the input from the networks. We present a concrete implementation of the proposed framework using the TrueNorth neuromorphic processor to play blackjack using a pre-programmed optimal strategy algorithm combined with a neural network trained to classify card images as input. Future extensions of this approach will develop a symbolic neuromorphic compiler for automatically creating networks from a symbolic programming language.
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关键词
deep learning,symbolic programming paradigms,neuromorphic system,disjoint co-processors,neural networks,sensor-driven noisy data,programmed symbolic logic,TrueNorth neuromorphic processor,pre-programmed optimal strategy algorithm,symbolic neuromorphic compiler,symbolic programming language
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