论文标题
物理前馈神经网络中的噪音缓解策略
Noise mitigation strategies in physical feedforward neural networks
论文作者
论文摘要
物理神经网络是下一代人工智能硬件的有希望的候选人。在这样的体系结构中,神经元和连接是物理上实现的,并且不利用其实际无限的信噪比来编码,传递和转换信息。因此,它们容易发挥各种统计和架构特性的噪音,并且利用网络谓词资产以硬件有效的方式降低噪声的有效策略对于追求下一代神经网络硬件很重要。基于分析推导,我们在这里介绍和分析了各种不同的减少降低降低方法。我们在分析上表明,连接矩阵平方平均值超过其平方的层内连接完全抑制了不相关的噪声。我们超越并制定了两种噪声的协同策略,它们在神经元种群之间是不相关和相关的。首先,我们介绍了幽灵神经元的概念,其中每组受相关噪声扰动的神经元与单个神经元的关系有负相关,但没有收到任何输入信息。其次,我们表明神经元种群的汇总是抑制无关噪声的有效方法。因此,我们制定了一种普遍的减轻噪声策略,利用了模拟硬件最相关的不同噪声术语的统计特性。最后,我们证明了这种训练的神经网络对MNIST手写数字进行分类的合并方法的有效性,为此,我们可以将输出信号噪声比率提高4倍,并将分类精度几乎提高到无噪声网络的水平。
Physical neural networks are promising candidates for next generation artificial intelligence hardware. In such architectures, neurons and connections are physically realized and do not leverage digital concepts with their practically infinite signal-to-noise ratio to encode, transduce and transform information. They therefore are prone to noise with a variety of statistical and architectural properties, and effective strategies leveraging network-inherent assets to mitigate noise in an hardware-efficient manner are important in the pursuit of next generation neural network hardware. Based on analytical derivations, we here introduce and analyse a variety of different noise-mitigation approaches. We analytically show that intra-layer connections in which the connection matrix's squared mean exceeds the mean of its square fully suppresses uncorrelated noise. We go beyond and develop two synergistic strategies for noise that is uncorrelated and correlated across populations of neurons. First, we introduce the concept of ghost neurons, where each group of neurons perturbed by correlated noise has a negative connection to a single neuron, yet without receiving any input information. Secondly, we show that pooling of neuron populations is an efficient approach to suppress uncorrelated noise. As such, we developed a general noise mitigation strategy leveraging the statistical properties of the different noise terms most relevant in analogue hardware. Finally, we demonstrate the effectiveness of this combined approach for trained neural network classifying the MNIST handwritten digits, for which we achieve a 4-fold improvement of the output signal-to-noise ratio and increase the classification accuracy almost to the level of the noise-free network.