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Computing Generalized Matrix Inverse on Spiking Neural Substrate

机译:尖峰神经基质上的广义矩阵逆计算

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摘要

Emerging neural hardware substrates, such as IBM's TrueNorth Neurosynaptic System, can provide an appealing platform for deploying numerical algorithms. For example, a recurrent Hopfield neural network can be used to find the Moore-Penrose generalized inverse of a matrix, thus enabling a broad class of linear optimizations to be solved efficiently, at low energy cost. However, deploying numerical algorithms on hardware platforms that severely limit the range and precision of representation for numeric quantities can be quite challenging. This paper discusses these challenges and proposes a rigorous mathematical framework for reasoning about range and precision on such substrates. The paper derives techniques for normalizing inputs and properly quantizing synaptic weights originating from arbitrary systems of linear equations, so that solvers for those systems can be implemented in a provably correct manner on hardware-constrained neural substrates. The analytical model is empirically validated on the IBM TrueNorth platform, and results show that the guarantees provided by the framework for range and precision hold under experimental conditions. Experiments with optical flow demonstrate the energy benefits of deploying a reduced-precision and energy-efficient generalized matrix inverse engine on the IBM TrueNorth platform, reflecting 10× to 100× improvement over FPGA and ARM core baselines.
机译:新兴的神经硬件基础,例如IBM的TrueNorth Neurosynaptic System,可以为部署数值算法提供一个吸引人的平台。例如,可以使用循环Hopfield神经网络来找到矩阵的Moore-Penrose广义逆,从而可以以较低的能源成本有效地解决各种线性优化问题。但是,在硬件平台上部署严重限制数字表示形式的范围和精度的数字算法可能会非常具有挑战性。本文讨论了这些挑战,并提出了一个严格的数学框架来推理此类基板的范围和精度。本文推导了用于标准化输入和适当量化源自任意线性方程组的突触权重的技术,以便可以在硬件受限的神经衬底上以可证明的正确方式来实现这些系统的求解器。该分析模型在IBM TrueNorth平台上进行了经验验证,结果表明,该框架所提供的范围和精度保证在实验条件下仍然有效。光流实验证明了在IBM TrueNorth平台上部署降低精度和能效的广义矩阵逆向引擎的能源优势,与FPGA和ARM核心基准相比提高了10到100倍。

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