脉冲变压器网络:一种处理顺序数据的速率编码方法

Etienne Mueller, V. Studenyak, Daniel Auge, Alois Knoll
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引用次数: 10

摘要

机器学习应用程序的性能正在稳步提高,同时也被部署在越来越多的能源有限的设备上。为了尽量减少这种权衡,研究人员正在不断寻找更节能的解决方案。一个很有前途的领域是将尖峰神经网络与神经形态硬件结合使用,因为只有在处理信息时才消耗能量,因此大大降低了能量消耗。然而,由于它们的学习算法落后于用反向传播训练的传统神经网络,因此今天的应用并不多。通过将反向传播训练的网络转换为尖峰网络,可以达到最高的精度。脉冲神经网络在全连接网络和卷积网络中表现出几乎相同的性能。循环网络的转换已被证明是具有挑战性的。然而,最近变压器网络的进展可能会改变这一点。这种类型的网络不仅由易于转换的模块组成,而且还显示了不同机器学习任务的最佳精度水平。在这项工作中,我们提出了一种将变压器结构转换为尖峰神经元网络的方法。只有最小的转换损失,我们的方法可以用于处理序列数据,具有非常高的精度,同时提供降低能耗的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spiking Transformer Networks: A Rate Coded Approach for Processing Sequential Data
Machine learning applications are steadily increasing in performance, while also being deployed on a growing number of devices with limited energy resources. To minimize this trade-off, researchers are continually looking for more energy efficient solutions. A promising field involves the use of spiking neural networks in combination with neuromorphic hardware, significantly reducing energy consumption since energy is only consumed as information is being processed. However, as their learning algorithms lag behind conventional neural networks trained with backpropagation, not many applications can be found today. The highest levels of accuracy can be achieved by converting networks that are trained with backpropagation to spiking networks. Spiking neural networks can show nearly the same performance in fully connected and convolutional networks. The conversion of recurrent networks has been shown to be challenging. However, recent progress with transformer networks could change this. This type of network not only consists of modules that can easily be converted, but also shows the best accuracy levels for different machine learning tasks. In this work, we present a method to convert the transformer architecture to networks of spiking neurons. With only minimal conversion loss, our approach can be used for processing sequential data with very high accuracy while offering the possibility of reductions in energy consumption.
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