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Probabilistic Inference in General Graphical Models through Sampling in Stochastic Networks of Spiking Neurons

机译:通过尖峰神经元随机网络中的采样,在一般图形模型中进行概率推断

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An important open problem of computational neuroscience is the generic organization of computations in networks of neurons in the brain. We show here through rigorous theoretical analysis that inherent stochastic features of spiking neurons, in combination with simple nonlinear computational operations in specific network motifs and dendritic arbors, enable networks of spiking neurons to carry out probabilistic inference through sampling in general graphical models. In particular, it enables them to carry out probabilistic inference in Bayesian networks with converging arrows (“explaining away”) and with undirected loops, that occur in many real-world tasks. Ubiquitous stochastic features of networks of spiking neurons, such as trial-to-trial variability and spontaneous activity, are necessary ingredients of the underlying computational organization. We demonstrate through computer simulations that this approach can be scaled up to neural emulations of probabilistic inference in fairly large graphical models, yielding some of the most complex computations that have been carried out so far in networks of spiking neurons.
机译:计算神经科学的一个重要的开放问题是大脑神经元网络中计算的一般组织。我们在这里通过严格的理论分析表明,尖峰神经元的内在随机特征与特定网络图案和树突状树突中的简单非线性计算操作相结合,使尖峰神经元的网络能够通过在常规图形模型中进行采样来进行概率推断。特别是,它使他们能够在收敛的箭头(“解释”)和无向循环中在许多现实世界中的任务中进行贝叶斯网络中的概率推断。尖峰神经元网络无处不在的随机特征,例如试验间的变异性和自发活动,是基础计算组织的必要组成部分。通过计算机仿真,我们证明了这种方法可以扩展到相当大的图形模型中的概率推理的神经仿真,从而产生到目前为止在尖峰神经元网络中已经执行的一些最复杂的计算。

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