神经记忆系统的片外训练方法比较

Cory E. Merkel, D. Kudithipudi
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引用次数: 10

摘要

神经记忆系统为非线性函数的实时学习和建模提供了一个有效的平台。具体来说,它们是模式分类的有效工具。然而,训练这些系统提出了几个挑战,特别是当CMOS和忆阻器工艺变化被考虑。本文提出了两种神经记忆系统的片外训练方法:权值编程和特征训练。详细的变化模型被开发来研究CMOS和忆阻器工艺变化对神经忆阻电路的影响,包括神经元、突触和训练电路。我们分析了这些变化对所提出的芯片外训练方法的影响。具体来说,我们训练一个神经记忆系统来对手写数字进行分类。结果表明,特征训练方法的单位面积分类准确率比权值规划方法提高2倍以上。然而,权重规划方法要快得多,可能更适合于网络需要频繁重新训练的情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of Off-Chip Training Methods for Neuromemristive Systems
Neuromemristive systems offer an efficient platform for learning and modeling non-linear functions in real time. Specifically, they are effective tools for pattern classification. However, training these systems presents several challenges, especially when CMOS and memristor process variations are considered. In this paper, we propose two off-chip training methods for neuromemristive systems: weight programming and feature training. Detailed variation models are developed to study the effects of CMOS and memristor process variations on neuromemristive circuits, including neurons, synapses, and training circuits. We analyze the impact of those variations on the proposed off-chip training methods. Specifically, we train a neuromemristive system to classify handwritten digits. The results indicate that the feature training method is able to provide over 2× better classification accuracy per unit area than the weight programming method. However, the weight programming method is much faster, and may be more suitable when the network needs to be frequently re-trained.
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