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Sparse Coding Using the Locally Competitive Algorithm on the TrueNorth Neurosynaptic System

机译:在TrueNorth神经突触系统上使用局部竞争算法进行稀疏编码

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摘要

The Locally Competitive Algorithm (LCA) is a biologically plausible computational architecture for sparse coding, where a signal is represented as a linear combination of elements from an over-complete dictionary. In this paper we map the LCA algorithm on the brain-inspired, IBM TrueNorth Neurosynaptic System. We discuss data structures and representation as well as the architecture of functional processing units that perform non-linear threshold, vector-matrix multiplication. We also present the design of the micro-architectural units that facilitate the implementation of dynamical based iterative algorithms. Experimental results with the LCA algorithm using the limited precision, fixed-point arithmetic on TrueNorth compare favorably with results using floating-point computations on a general purpose computer. The scaling of the LCA algorithm within the constraints of the TrueNorth is also discussed.
机译:本地竞争算法(LCA)是稀疏编码的生物学上合理的计算架构,其中信号表示为来自过于完整字典的元素的线性组合。在本文中,我们将LCA算法映射到受大脑启发的IBM TrueNorth Neurosynaptic System。我们讨论执行非线性阈值,矢量矩阵乘法的数据结构和表示以及功能处理单元的体系结构。我们还介绍了微体系结构单元的设计,这些单元有助于实现基于动态的迭代算法。在TrueNorth上使用有限精度,定点算法的LCA算法的实验结果与在通用计算机上使用浮点计算的结果相比具有优势。还讨论了在TrueNorth约束内的LCA算法缩放。

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