Hardware-efficient learning with feedforward inhibition

Zihan Xu, Pai-Yu Chen, Jae-sun Seo, Shimeng Yu, Yu Cao
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引用次数: 1

Abstract

On-chip learning and classification have a broad impact on many applications. Yet their hardware implementation is still limited by the scale of computation, as well as practical issues of device fabrication, variability and reliability. Inspired by micro neural-circuits in the cortical system, this work develops a novel solution that efficiently reduces the network size and improves the learning accuracy. The building block is the motif of feedforward inhibition that effectively separates main features and the residual in sparse feature extraction. Other learning rules follow the spike-rate-dependent-plasticity (SRDP). As demonstrated in handwriting recognition, such a bio-plausible solution is able to achieve >95% accuracy, comparable to the sparse coding algorithms; in addition, SRDP, instead of gradient based back propagation, is able to save the computation time by >50X. The utilization of the inhibition motif reduces the network size by >3X at the same accuracy, illustrating its potential in hardware efficiency.
具有前馈抑制的硬件高效学习
片上学习和分类对许多应用有着广泛的影响。然而,它们的硬件实现仍然受到计算规模、设备制造、可变性和可靠性等实际问题的限制。受皮层系统中微神经回路的启发,本研究开发了一种新的解决方案,有效地减小了网络的大小,提高了学习的准确性。构建块是前馈抑制的基序,在稀疏特征提取中有效地分离主特征和残差。其他学习规则遵循峰值速率依赖的可塑性(SRDP)。正如在手写识别中所证明的那样,这种生物似是而非的解决方案能够达到bb0 95%的准确率,与稀疏编码算法相当;此外,SRDP代替了基于梯度的反向传播,可以将计算时间节省50倍。在相同的精度下,抑制基序的使用将网络大小减少了100倍,这说明了它在硬件效率方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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