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Neuron-centric local learning rate for artificial neural networks to increase performance, learning rate margin, and reduce power consumption

机译:以人工神经网络为中心的以神经元为中心的本地学习率,以提高性能,学习率余量并减少功耗

摘要

Artificial neural networks (ANNs) are a distributed computing model in which computation is accomplished using many simple processing units (called neurons) and the data embodied by the connections between neurons (called synapses) and the strength of these connections (called synaptic weights). An attractive implementation of ANNs uses the conductance of non-volatile memory (NVM) elements to code the synaptic weight. In this application, the non-idealities in the response of the NVM (such as nonlinearity, saturation, stochasticity and asymmetry in response to programming pulses) lead to reduced network performance compared to an ideal network implementation. Disclosed is a method that improves performance by implementing a learning rate parameter that is local to each synaptic connection, a method for tuning this local learning rate, and an implementation that does not compromise the ability to train many synaptic weights in parallel during learning.
机译:人工神经网络(ANN)是一种分布式计算模型,其中使用许多简单的处理单元(称为神经元)以及由神经元之间的连接(称为突触)和这些连接的强度(称为突触权重)体现的数据来完成计算。 ANN的一种有吸引力的实现方式是使用非易失性存储(NVM)元件的电导来编码突触权重。在此应用中,与理想的网络实现相比,NVM响应的非理想性(例如响应编程脉冲的非线性,饱和度,随机性和不对称性)导致网络性能下降。公开了一种通过实现对于每个突触连接而言局部的学习速率参数来提高性能的方法,一种用于调整该局部学习速率的方法以及一种不损害在学习期间并行训练许多突触权重的能力的实现。

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