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Stochastic inference with spiking neurons in the high-conductance state

机译:高导态尖峰神经元的随机推断

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The highly variable dynamics of neocortical circuits observed in vivo have been hypothesized to represent a signature of ongoing stochastic inference but stand in apparent contrast to the deterministic response of neurons measured in vitro. Based on a propagation of the membrane autocorrelation across spike bursts, we provide an analytical derivation of the neural activation function that holds for a large parameter space, including the high-conductance state. On this basis, we show how an ensemble of leaky integrate-and-fire neurons with conductance-based synapses embedded in a spiking environment can attain the correct firing statistics for sampling from a well-defined target distribution. For recurrent networks, we examine convergence toward stationarity in computer simulations and demonstrate sample-based Bayesian inference in a mixed graphical model. This points to a new computational role of high-conductance states and establishes a rigorous link between deterministic neuron models and functional stochastic dynamics on the network level.
机译:假设在体内观察到的新皮层回路的高度动态变化可以代表正在进行的随机推断的特征,但与在体外测得的神经元的确定性反应明显不同。基于膜自相关跨尖峰爆发的传播,我们提供了神经激活函数的解析推导,该函数适用于大参数空间,包括高电导状态。在此基础上,我们展示了如何在泄漏环境中集成带有电导突触的漏电集成并激发神经元,以获得正确的放电统计数据,以便从定义明确的目标分布中进行采样。对于递归网络,我们在计算机仿真中研究了平稳性的收敛性,并在混合图形模型中演示了基于样本的贝叶斯推理。这指出了高电导态的新计算作用,并在网络级确定性神经元模型与功能随机动力学之间建立了严格的联系。

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