Long Short-Term Memory with Spin-Based Binary and Non-Binary Neurons

Shadi Sheikhfaal, Meghana Reddy Vangala, Adekunle A. Adepegba, R. Demara
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引用次数: 2

Abstract

In this paper, we develop a low-power and area-efficient hardware implementation for Long Short-Term Memory (LSTM) networks as a type of Recurrent Neural Network (RNN). The LSTM network herein employs Resistive Random-Access Memory (ReRAM) based synapses along with spin-based non-binary neurons to achieve energy-efficiency while maintaining comparable accuracy. The proposed neuron provides a novel activation mechanism with five levels of output accuracy to mimic the ideal tanh and sigmoid activation functions. We have examined the performance of an LSTM network for name prediction purposes utilizing ideal, binary, and the proposed non-binary neuron. The comparison of the results shows that our proposed neuron can achieve up to 85% accuracy and perplexity of 1.56, which attains performance similar to algorithmic expectations of near-ideal neurons. The simulations show that our proposed neuron achieves up to 34-fold improvement in energy efficiency and 2-fold area reduction compared to the CMOS-based non-binary designs.
基于自旋的二进制和非二进制神经元的长短期记忆
在本文中,我们为长短期记忆(LSTM)网络开发了一种低功耗和区域效率的硬件实现,作为一种递归神经网络(RNN)。本文的LSTM网络采用基于电阻随机存取存储器(ReRAM)的突触以及基于自旋的非二进制神经元来实现能量效率,同时保持相当的准确性。所提出的神经元提供了一种新的激活机制,具有5级输出精度来模拟理想的tanh和sigmoid激活函数。我们已经研究了LSTM网络在名称预测方面的性能,使用理想、二进制和提议的非二进制神经元。结果表明,我们提出的神经元可以达到高达85%的准确率和1.56的困惑度,达到接近理想神经元的算法期望的性能。仿真结果表明,与基于cmos的非二进制设计相比,我们提出的神经元的能量效率提高了34倍,面积减少了2倍。
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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