Are alternatives to backpropagation useful for training Binary Neural Networks? An experimental study in image classification

IF 0.4 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS Applied Computing Review Pub Date : 2023-03-27 DOI:10.1145/3555776.3577674
Ben Crulis, Barthélémy Serres, Cyril de Runz, G. Venturini
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Abstract

Current artificial neural networks are trained with parameters encoded as floating point numbers that occupy lots of memory space at inference time. Due to the increase in size of deep learning models, it is becoming very difficult to consider training and using artificial neural networks on edge devices such as smartphones. Binary neural networks promise to reduce the size of deep neural network models as well as increasing inference speed while decreasing energy consumption and so allow the deployment of more powerful models on edge devices. However, binary neural networks are still proven to be difficult to train using the backpropagation based gradient descent scheme. We propose to adapt to binary neural networks two training algorithms considered as promising alternatives to backpropagation but for continuous neural networks. We provide experimental comparative results for image classification including the backpropagation baseline on the MNIST, Fashion MNIST and CIFAR-10 datasets in both continuous and binary settings. The results demonstrate that binary neural networks can not only be trained using alternative algorithms to backpropagation but can also be shown to lead better performance and a higher tolerance to the presence or absence of batch normalization layers.
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反向传播的替代方法对训练二元神经网络有用吗?图像分类的实验研究
目前的人工神经网络是用浮点数编码的参数来训练的,在推理时占用了大量的内存空间。由于深度学习模型规模的增加,考虑在智能手机等边缘设备上训练和使用人工神经网络变得非常困难。二元神经网络有望减少深度神经网络模型的大小,提高推理速度,同时降低能耗,从而允许在边缘设备上部署更强大的模型。然而,使用基于反向传播的梯度下降方案训练二元神经网络仍然被证明是困难的。我们提出了适合于二元神经网络的两种训练算法,这两种算法被认为是有前途的反向传播替代方案,但适用于连续神经网络。在连续和二进制设置下,我们提供了包括MNIST、Fashion MNIST和CIFAR-10数据集上的反向传播基线图像分类的实验比较结果。结果表明,二元神经网络不仅可以使用反向传播的替代算法进行训练,而且还可以显示出更好的性能和对批处理归一化层存在或不存在的更高容忍度。
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来源期刊
Applied Computing Review
Applied Computing Review COMPUTER SCIENCE, INFORMATION SYSTEMS-
自引率
40.00%
发文量
8
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