2021
DOI: 10.48550/arxiv.2111.08888
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Random Graph-Based Neuromorphic Learning with a Layer-Weaken Structure

Abstract: Unified understanding of neuro networks (NNs) gets the users into great trouble because they have been puzzled by what kind of rules should be obeyed to optimize the internal structure of NNs. Considering the potential capability of random graphs to alter how computation is performed, we demonstrate that they can serve as architecture generators to optimize the internal structure of NNs. To transform the random graph theory into an NN model with practical meaning and based on clarifying the input-output relati… Show more

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