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Synaptic Sampling: A Bayesian Approach to Neural Network Plasticity and Rewiring

机译:突触采样:神经网络可塑性和重新布线的贝叶斯方法。

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We reexamine in this article the conceptual and mathematical framework for understanding the organization of plasticity in spiking neural networks. We propose that inherent stochasticity enables synaptic plasticity to carry out probabilistic inference by sampling from a posterior distribution of synaptic parameters. This view provides a viable alternative to existing models that propose convergence of synaptic weights to maximum likelihood parameters. It explains how priors on weight distributions and connection probabilities can be merged optimally with learned experience. In simulations we show that our model for synaptic plasticity allows spiking neural networks to compensate continuously for unforeseen disturbances. Furthermore it provides a normative mathematical framework to better understand the permanent variability and rewiring observed in brain networks.
机译:我们在本文中重新检查了概念和数学框架,以了解加标神经网络中可塑性的组织。我们建议固有的随机性使突触可塑性能够通过从突触参数的后验分布进行采样来进行概率推断。这种观点为提出突触权重收敛到最大似然参数的现有模型提供了可行的替代方案。它说明了重量分配和连接概率的先验如何与学习的经验最佳地合并。在模拟中,我们表明我们的突触可塑性模型可以使尖峰神经网络连续补偿不可预见的干扰。此外,它提供了一个规范的数学框架,可以更好地了解在大脑网络中观察到的永久性变异和重新布线。

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