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Ensembles of Spiking Neurons with Noise Support Optimal Probabilistic Inference in a Dynamically Changing Environment

机译:在动态变化的环境中具有噪声的尖峰神经元集成支持最佳概率推理

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摘要

It has recently been shown that networks of spiking neurons with noise can emulate simple forms of probabilistic inference through “neural sampling”, i.e., by treating spikes as samples from a probability distribution of network states that is encoded in the network. Deficiencies of the existing model are its reliance on single neurons for sampling from each random variable, and the resulting limitation in representing quickly varying probabilistic information. We show that both deficiencies can be overcome by moving to a biologically more realistic encoding of each salient random variable through the stochastic firing activity of an ensemble of neurons. The resulting model demonstrates that networks of spiking neurons with noise can easily track and carry out basic computational operations on rapidly varying probability distributions, such as the odds of getting rewarded for a specific behavior. We demonstrate the viability of this new approach towards neural coding and computation, which makes use of the inherent parallelism of generic neural circuits, by showing that this model can explain experimentally observed firing activity of cortical neurons for a variety of tasks that require rapid temporal integration of sensory information.
机译:最近显示,带有噪声的尖刺神经元网络可以通过“神经采样”,即通过将尖峰视为来自网络中编码的网络状态的概率分布的样本,来模拟概率推断的简单形式。现有模型的不足之处在于,它依赖于单个神经元来从每个随机变量中进行采样,并且在表示快速变化的概率信息方面受到了限制。我们表明,可以通过移动神经元集合的随机激发活动,对每个显着随机变量进行生物学上更现实的编码来克服这两种缺陷。生成的模型表明,带有噪声的尖峰神经元网络可以轻松跟踪和执行迅速变化的概率分布的基本计算操作,例如针对特定行为获得奖励的几率。我们证明了这种新方法对神经编码和计算的可行性,该方法利用了通用神经回路的内在并行性,表明该模型可以解释实验观察到的皮质神经元在需要快速时间整合的各种任务中的放电活动感官信息。

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