FastHebb:将深度神经网络的Hebbian训练扩展到ImageNet级别

Gabriele Lagani, C. Gennaro, Hannes Fassold, G. Amato
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引用次数: 3

摘要

深度神经网络的学习算法通常是基于有监督的端到端随机梯度下降(SGD)训练和误差反向传播(backprop)。Backprop算法需要大量的标记训练样本才能达到高性能。然而,在许多实际应用中,即使有大量的图像样本,也很少有图像样本被标记,因此必须使用半监督样本效率训练策略。Hebbian学习代表了一种样本高效训练的可能方法;然而,在目前的解决方案中,它不能很好地扩展到大型数据集。在本文中,我们提出了FastHebb,一种高效且可扩展的Hebbian学习解决方案,它通过将一批输入的更新计算和聚合合并在一起,以及在GPU上利用高效的矩阵乘法算法来实现更高的效率。我们在半监督学习场景中,在不同的计算机视觉基准上验证了我们的方法。FastHebb在训练速度方面比以前的解决方案高出50倍,值得注意的是,我们第一次能够将Hebbian算法带到ImageNet规模。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FastHebb: Scaling Hebbian Training of Deep Neural Networks to ImageNet Level
Learning algorithms for Deep Neural Networks are typically based on supervised end-to-end Stochastic Gradient Descent (SGD) training with error backpropagation (backprop). Backprop algorithms require a large number of labelled training samples to achieve high performance. However, in many realistic applications, even if there is plenty of image samples, very few of them are labelled, and semi-supervised sample-efficient training strategies have to be used. Hebbian learning represents a possible approach towards sample efficient training; however, in current solutions, it does not scale well to large datasets. In this paper, we present FastHebb, an efficient and scalable solution for Hebbian learning which achieves higher efficiency by 1) merging together update computation and aggregation over a batch of inputs, and 2) leveraging efficient matrix multiplication algorithms on GPU. We validate our approach on different computer vision benchmarks, in a semi-supervised learning scenario. FastHebb outperforms previous solutions by up to 50 times in terms of training speed, and notably, for the first time, we are able to bring Hebbian algorithms to ImageNet scale.
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