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Random synaptic feedback weights support error backpropagation for deep learning

机译:随机突触反馈权重支持深度学习的错误反向传播

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摘要

The brain processes information through multiple layers of neurons. This deep architecture is representationally powerful, but complicates learning because it is difficult to identify the responsible neurons when a mistake is made. In machine learning, the backpropagation algorithm assigns blame by multiplying error signals with all the synaptic weights on each neuron's axon and further downstream. However, this involves a precise, symmetric backward connectivity pattern, which is thought to be impossible in the brain. Here we demonstrate that this strong architectural constraint is not required for effective error propagation. We present a surprisingly simple mechanism that assigns blame by multiplying errors by even random synaptic weights. This mechanism can transmit teaching signals across multiple layers of neurons and performs as effectively as backpropagation on a variety of tasks. Our results help reopen questions about how the brain could use error signals and dispel long-held assumptions about algorithmic constraints on learning.
机译:大脑通过多层神经元处理信息。这种深层结构具有强大的代表性,但是使学习变得复杂,因为在犯错误时很难识别负责任的神经元。在机器学习中,反向传播算法通过将错误信号乘以每个神经元轴突以及更下游的所有突触权重来分配指责。但是,这涉及精确,对称的向后连接模式,这在大脑中被认为是不可能的。在这里,我们证明了有效的错误传播并不需要这种强大的体系结构约束。我们提出了一种令人惊讶的简单机制,即通过将误差乘以随机突触权重来分配责任。这种机制可以跨多个神经元层传输教学信号,并且在各种任务上的效果与反向传播一样有效。我们的结果有助于重新讨论关于大脑如何使用错误信号并消除关于算法学习限制的长期存在的疑问。

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