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Direct Feedback Alignment Provides Learning in Deep Neural Networks

机译:直接反馈对齐可在深度神经网络中提供学习

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Artificial neural networks are most commonly trained with the back-propagation algorithm, where the gradient for learning is provided by back-propagating the error, layer by layer, from the output layer to the hidden layers. A recently discovered method called feedback-alignment shows that the weights used for propagating the error backward don't have to be symmetric with the weights used for propagation the activation forward. In fact, random feedback weights work evenly well, because the network learns how to make the feedback useful. In this work, the feedback alignment principle is used for training hidden layers more independently from the rest of the network, and from a zero initial condition. The error is propagated through fixed random feedback connections directly from the output layer to each hidden layer. This simple method is able to achieve zero training error even in convolutional networks and very deep networks, completely without error back-propagation. The method is a step towards biologically plausible machine learning because the error signal is almost local, and no symmetric or reciprocal weights are required. Experiments show that the test performance on MNIST and CIFAR is almost as good as those obtained with back-propagation for fully connected networks. If combined with dropout, the method achieves 1.45% error on the permutation invariant MNIST task.
机译:人工神经网络最常使用反向传播算法进行训练,其中通过从输出层到隐藏层逐层反向传播错误来提供学习梯度。最近发现的一种称为“反馈对齐”的方法表明,用于向后传播错误的权重不必与用于向后传播激活的权重对称。实际上,由于网络学习了如何使反馈有用,因此随机反馈权重可以很好地均衡工作。在这项工作中,反馈对齐原则用于更独立于网络的其余部分和零初始条件来训练隐藏层。该误差通过固定的随机反馈连接直接从输出层传播到每个隐藏层。即使在卷积网络和非常深的网络中,这种简单的方法也能够实现零训练错误,完全没有错误的反向传播。该方法是朝着生物学上合理的机器学习迈出的一步,因为误差信号几乎是局部的,并且不需要对称或倒数权重。实验表明,在MNIST和CIFAR上的测试性能几乎与通过反向传播获得的全连接网络性能相当。如果与辍学结合使用,则该方法在置换不变MNIST任务上可实现1.45%的误差。

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