论文标题
皮质皮质网络中的单相深学习
Single-phase deep learning in cortico-cortical networks
论文作者
论文摘要
错误 - 背面propagation(反向Prop)算法仍然是人工神经网络中信用分配问题的最常见解决方案。在神经科学中,尚不清楚大脑是否可以采用类似的策略来纠正其突触。最近的模型试图弥合这一差距,同时与一系列实验观察一致。但是,这些模型要么无法有效地跨多层返回错误信号,要么需要多相学习过程,这两个过程都不让人想起大脑中的学习。在这里,我们介绍了一种新模型,破裂的皮质皮质网络(burstCCN),该网络通过整合皮质网络的已知特性,即爆发活动,短期可塑性(STP)和树突状 - 靶向中间神经元来解决这些问题。 BUSTCCN依赖于连接型特异性STP的爆发多路复用来传播深层皮质网络中的类似反向Prop的误差信号。这些误差信号是在远端树突上编码的,由于兴奋性抑制性自上而下的输入而诱导爆发依赖性可塑性。首先,我们证明我们的模型可以使用单相学习过程有效地通过多层回溯错误。接下来,我们通过经验和分析表明,在我们的模型中学习近似反向推销的梯度。最后,我们证明我们的模型能够学习复杂的图像分类任务(MNIST和CIFAR-10)。总体而言,我们的结果表明,跨细胞,细胞,微电路和系统水平的皮质特征共同基于大脑中的单相有效深度学习。
The error-backpropagation (backprop) algorithm remains the most common solution to the credit assignment problem in artificial neural networks. In neuroscience, it is unclear whether the brain could adopt a similar strategy to correctly modify its synapses. Recent models have attempted to bridge this gap while being consistent with a range of experimental observations. However, these models are either unable to effectively backpropagate error signals across multiple layers or require a multi-phase learning process, neither of which are reminiscent of learning in the brain. Here, we introduce a new model, Bursting Cortico-Cortical Networks (BurstCCN), which solves these issues by integrating known properties of cortical networks namely bursting activity, short-term plasticity (STP) and dendrite-targeting interneurons. BurstCCN relies on burst multiplexing via connection-type-specific STP to propagate backprop-like error signals within deep cortical networks. These error signals are encoded at distal dendrites and induce burst-dependent plasticity as a result of excitatory-inhibitory top-down inputs. First, we demonstrate that our model can effectively backpropagate errors through multiple layers using a single-phase learning process. Next, we show both empirically and analytically that learning in our model approximates backprop-derived gradients. Finally, we demonstrate that our model is capable of learning complex image classification tasks (MNIST and CIFAR-10). Overall, our results suggest that cortical features across sub-cellular, cellular, microcircuit and systems levels jointly underlie single-phase efficient deep learning in the brain.