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Synchronization can Control Regularization in Neural Systems via Correlated Noise Processes

机译:同步可以通过相关的噪声过程控制神经系统中的正则化

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To learn reliable rules that can generalize to novel situations, the brain must be capable of imposing some form of regularization. Here we suggest, through theoretical and computational arguments, that the combination of noise with synchronization provides a plausible mechanism for regularization in the nervous system. The functional role of regularization is considered in a general context in which coupled computational systems receive inputs corrupted by correlated noise. Noise on the inputs is shown to impose regularization, and when synchronization upstream induces time-varying correlations across noise variables, the degree of regularization can be calibrated over time. The resulting qualitative behavior matches experimental data from visual cortex.
机译:要学习可以推广到新颖情况的可靠规则,大脑必须能够施加某种形式的正则化。在这里,我们建议通过理论和计算论证,噪声与同步的结合为神经系统的正则化提供了合理的机制。在耦合计算系统接收被相关噪声破坏的输入的一般情况下,考虑了正则化的功能作用。输入上的噪声显示出要进行正则化,并且当上游同步在噪声变量之间引起时变相关时,可以随时间校准正则化程度。所得的定性行为与来自视觉皮层的实验数据相匹配。

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