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Automatic Adaptation to Fast Input Changes in a Time-Invariant Neural Circuit

机译:在时不变神经电路中自动适应快速输入变化

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摘要

Neurons must faithfully encode signals that can vary over many orders of magnitude despite having only limited dynamic ranges. For a correlated signal, this dynamic range constraint can be relieved by subtracting away components of the signal that can be predicted from the past, a strategy known as predictive coding, that relies on learning the input statistics. However, the statistics of input natural signals can also vary over very short time scales e.g., following saccades across a visual scene. To maintain a reduced transmission cost to signals with rapidly varying statistics, neuronal circuits implementing predictive coding must also rapidly adapt their properties. Experimentally, in different sensory modalities, sensory neurons have shown such adaptations within 100 ms of an input change. Here, we show first that linear neurons connected in a feedback inhibitory circuit can implement predictive coding. We then show that adding a rectification nonlinearity to such a feedback inhibitory circuit allows it to automatically adapt and approximate the performance of an optimal linear predictive coding network, over a wide range of inputs, while keeping its underlying temporal and synaptic properties unchanged. We demonstrate that the resulting changes to the linearized temporal filters of this nonlinear network match the fast adaptations observed experimentally in different sensory modalities, in different vertebrate species. Therefore, the nonlinear feedback inhibitory network can provide automatic adaptation to fast varying signals, maintaining the dynamic range necessary for accurate neuronal transmission of natural inputs.
机译:尽管只有有限的动态范围,但神经元必须忠实地编码可以在许多数量级上变化的信号。对于相关信号,可以通过减去过去可以预测的信号分量来减轻此动态范围约束,该策略称为预测编码,该策略依赖于学习输入统计信息。但是,输入自然信号的统计量也可以在很短的时间范围内变化,例如,在整个视觉场景中发生扫视之后。为了保持统计数据快速变化的信号的降低的传输成本,实现预测编码的神经元电路还必须快速调整其属性。实验上,在不同的感觉形态中,感觉神经元在输入变化的100毫秒内显示出这种适应性。在这里,我们首先显示连接在反馈抑制电路中的线性神经元可以实现预测编码。然后,我们表明,向这种反馈抑制电路添加整流非线性特性,使其能够在较宽的输入范围内自动适应和近似最佳线性预测编码网络的性能,同时保持其基本的时间和突触特性不变。我们证明,此非线性网络的线性时间滤波器的结果变化与在不同脊椎动物中在不同感觉方式下实验观察到的快速适应相匹配。因此,非线性反馈抑制网络可以自动适应快速变化的信号,从而保持自然输入的精确神经元传输所必需的动态范围。

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