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A solution to the learning dilemma for recurrent networks of spiking neurons

机译:用于掺入神经元的经常性网络的学习困境的解决方案

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Recurrently connected networks of spiking neurons underlie the astounding information processing capabilities of the brain. Yet in spite of extensive research, how they can learn through synaptic plasticity to carry out complex network computations?remains unclear. We argue that two pieces of this puzzle were provided by experimental data from neuroscience. A mathematical result tells us how these pieces need to be combined to enable biologically plausible online network learning through gradient descent, in particular deep reinforcement learning. This learning method-called e-prop-approaches the performance of backpropagation through time (BPTT), the best-known method for training recurrent neural networks in machine learning. In addition, it suggests a method for powerful on-chip learning in energy-efficient spike-based hardware for artificial intelligence.
机译:循环神经元的循环连接网络利于大脑的令人震惊的信息处理能力。然而,尽管研究了广泛的研究,他们如何通过突触可塑性来实现复杂的网络计算?仍然不清楚。我们认为这两个拼图由神经科学的实验数据提供。数学结果告诉我们这些作品如何组合,以通过梯度下降,特别是深度增强学习来实现生物合理的在线网络学习。这种学习方法称为E-PROP - 通过时间(BPTT),是培训机器学习中的经常性神经网络的最佳方法的性能。此外,它还表明了一种用于人工智能的节能钉硬件中强大的片上学习的方法。

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