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Classification accuracy improvement for neuromorphic computing systems with one-level precision synapses

机译:具有一级精度突触的神经形态计算系统的分类精度提高

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Brain inspired neuromorphic computing has demonstrated remarkable advantages over traditional von Neumann architecture for its high energy efficiency and parallel data processing. However, the limited resolution of synaptic weights degrades system accuracy and thus impedes the use of neuromorphic systems. In this work, we propose three orthogonal methods to learn synapses with one-level precision, namely, distribution-aware quantization, quantization regularization and bias tuning, to make image classification accuracy comparable to the state-of-the-art. Experiments on both multi-layer perception and convolutional neural networks show that the accuracy drop can be well controlled within 0.19% (5.53%) for MNIST (CIFAR-10) database, compared to an ideal system without quantization.
机译:与传统的冯·诺依曼(von Neumann)架构相比,具有大脑启发性的神经形态计算技术具有很高的能效和并行数据处理能力,因此已证明具有非凡的优势。但是,突触权重的有限分辨率会降低系统精度,因此会阻碍神经形态系统的使用。在这项工作中,我们提出了三种正交方法来以一级精度学习突触,即分布感知的量化,量化正则化和偏差调整,以使图像分类的准确性可与最新技术相媲美。多层感知和卷积神经网络的实验表明,与没有量化的理想系统相比,MNIST(CIFAR-10)数据库的准确度下降可以很好地控制在0.19%(5.53%)之内。

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