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Delta-Sigma Modulation Neurons for High-Precision Training of Memristive Synapses in Deep Neural Networks

机译:Delta-Sigma调制神经元用于深度神经网络中忆阻突触的高精度训练

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The spike generation mechanism and information coding process of biological neurons can be emulated by the amplitude-to-frequency modulation property of delta-sigma modulators (ΔΣ). Oversampling, averaging, and noise-shaping features of the ΔΣ allow high neural coding accuracy and mitigate the intrinsic noise level in neural networks. In this paper, a ΔΣ is proposed as a neuron activation function for inference and training of artificial analog neural networks. The inherent dithering of the ΔΣ prevents the weights from being stuck in a spurious local minimum, and its nonlinear transfer function makes it attractive for multi-layer architectures. Memristive synapses are used as weights, which are trained by supervised/unsupervised machine learning (ML) algorithms, using stochastic gradient descent (SGD) or biologically plausible spike-time-dependent plasticity (STDP). Our ΔΣ networks outperform the prevalent power-hungry pulse width modulator counterparts, with 97.37% training accuracy and 3.2X speedup in MNIST using SGD. These findings constitute a milestone in closing the cultural gap between brain-inspired models and ML using analog neuromorphic hardware.
机译:可以通过delta-sigma调制器(ΔΣ)的幅度-频率调制特性来模拟生物神经元的尖峰生成机制和信息编码过程。 ΔΣ的过采样,平均和噪声整形功能可实现较高的神经编码精度并减轻神经网络中的固有噪声水平。在本文中,提出了ΔΣ作为神经元激活函数,用于人工模拟神经网络的推理和训练。 ΔΣ的固有抖动可防止权重卡在虚假的局部最小值中,并且其非线性传递函数使其对于多层体系结构具有吸引力。忆阻突触用作权重,通过有监督/无监督机器学习(ML)算法,使用随机梯度下降(SGD)或生物学上合理的峰值时间相关可塑性(STDP)进行训练。我们的ΔΣ网络以97.37%的训练精度和使用SGD的MNIST的3.2倍加速性能,胜过了常见的耗电的脉宽调制器。这些发现构成了使用模拟神经形态硬件缩小大脑灵感模型与ML之间的文化鸿沟的里程碑。

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