Effect of Optimization Techniques on Feedback Alignment Learning of Neural Networks

Soha Lee, Hyeyoung Park
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Abstract

The error backpropagation algorithm is a representative learning method that has been used in most deep network models. However, the error backpropagation algorithm, despite its decent performance, clearly has limits to its biological plausibility. Unlike the learning mechanism of the actual brain, the error backpropagation algorithm must reuse the weights used in the forward calculation for the backward error propagation. In order to overcome these limitations, the feedback alignment method, which uses a fixed random weight for the backpropagation computation, was proposed. The feedback alignment algorithm showed performances comparable to the original error backpropagation on several benchmark data sets. However, it is still in the preliminary stage of analysis, and various analysis on its learning behavior and practical efficiency are needed. In this paper, we combine feedback alignment learning method with popular optimization techniques such as RMSprop and Adam, and investigate its effect on the learning performances through computational experiments on benchmark data sets.
优化技术对神经网络反馈对准学习的影响
误差反向传播算法是一种代表性的学习方法,已被应用于大多数深度网络模型中。然而,误差反向传播算法,尽管有良好的性能,显然有其生物合理性的限制。与实际大脑的学习机制不同,误差反向传播算法必须重用前向计算中使用的权重来进行后向误差传播。为了克服这些局限性,提出了采用固定随机权值进行反向传播计算的反馈对齐方法。在多个基准数据集上,反馈对齐算法显示了与原始误差反向传播相当的性能。然而,它还处于分析的初级阶段,需要对其学习行为和实际效率进行各种分析。在本文中,我们将反馈对齐学习方法与RMSprop和Adam等流行的优化技术相结合,并通过基准数据集的计算实验来研究其对学习性能的影响。
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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