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.
翻译:错误背对称算法( 背对称) 仍然是人工神经网络中信用分配问题最常见的解决方案。 在神经科学中, 大脑能否采取类似的策略来正确修改其神经突触, 尚不清楚。 最近的模型试图弥补这一差距, 同时又与一系列实验性观测一致。 但是, 这些模型要么无法有效地反向反向对称跨多层错误信号, 或者需要多阶段学习过程, 这两种模型都不是大脑中学习的回溯性错误信号。 在这里, 我们引入了一个新的模型, Bursting Cortico- Cortical Networks (BurstCCN), 通过整合已知的螺旋网络特性来解决这些问题, 包括爆破活动、 短期塑料(STP) 和 dendriate- 瞄准内中内中流。 BurstCCN 依赖通过连接类型特定的 STP 破碎多个反向多个反向, 在深层次的模型网络中传播反向错误信号。 这些错误信号是分解的, 并诱导着快速的 Cortical- cal comliveral commal commal yal commal commal real real commal resmal 。