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Small-world Hopfield neural networks with weight salience priority and memristor synapses for digit recognition

机译:具有权重显着性优先级和忆阻器突触的小世界Hopfield神经网络用于数字识别

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摘要

A novel systematic design of associative memory networks is addressed in this paper, by incorporating both the biological small-world effect and the recently acclaimed memristor into the conventional Hopfield neural network. More specifically, the original fully connected Hopfield network is diluted by considering the small-world effect, based on a preferential connection removal criteria, i.e., weight salience priority. The generated sparse network exhibits comparable performance in associative memory but with much less connections. Furthermore, a hardware implementation scheme of the small-world Hopfield network is proposed using the experimental threshold adaptive memristor (TEAM) synaptic-based circuits. Finally, performance of the proposed network is validated by illustrative examples of digit recognition.
机译:通过将生物学的小世界效应和最近广受赞誉的忆阻器结合到常规的Hopfield神经网络中,提出了一种新型的联想记忆网络系统设计。更具体地,基于优先的连接移除标准,即重量显着性优先级,通过考虑小世界效应来稀释原始的完全连接的Hopfield网络。生成的稀疏网络在关联内存中表现出可比的性能,但是连接少得多。此外,使用基于实验阈值自适应忆阻器(TEAM)突触的电路,提出了小世界Hopfield网络的硬件实现方案。最后,通过数字识别的说明性示例验证了所提出网络的性能。

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