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Inferring the capacity of the vector Poisson channel with a Bernoulli model

机译:用伯努利模型推断向量泊松通道的容量

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The capacity defines the ultimate fidelity limits of information transmission by any system. We derive the capacity of parallel Poisson process channels to judge the relative effectiveness of neural population structures. Because the Poisson process is equivalent to a Bernoulli process having small event probabilities, we infer the capacity of multi-channel Poisson models from their Bernoulli surrogates. For neural populations wherein each neuron has individual innervation, inter-neuron dependencies increase capacity, the opposite behavior of populations that share a single input. We use Shannon's rate-distortion theory to show that for Gaussian stimuli, the mean-squared error of the decoded stimulus decreases exponentially in both the population size and the maximal discharge rate. Detailed analysis shows that population coding is essential for accurate stimulus reconstruction. By modeling multi-neuron recordings as a sum of a neural population, we show that the resulting capacity is much less than the population's, reducing it to a level that can be less than provided with two separated neural responses. This result suggests that attempting neural control without spike sorting greatly reduces the achievable fidelity. In contrast, single-electrode neural stimulation does not incur any capacity deficit in comparison to stimulating individual neurons.
机译:容量定义了任何系统进行信息传输的最终保真度限制。我们得出平行泊松过程通道判断神经种群结构相对有效性的能力。因为泊松过程等同于事件概率很小的伯努利过程,所以我们从伯努利代理中推断出多通道泊松模型的能力。对于其中每个神经元具有独立神经支配的神经种群,神经元间依赖性增加了容量,即共享单个输入的种群的相反行为。我们使用香农率失真理论表明,对于高斯刺激,解码后刺激的均方误差在人口规模和最大出院率上均呈指数下降。详细分析表明,种群编码对于准确的刺激重建至关重要。通过将多神经元记录建模为一个神经种群的总和,我们表明所产生的容量远小于该种群的容量,并将其降低到可以小于两个独立的神经反应所提供的容量。该结果表明,尝试不进行尖峰排序的神经控制会大大降低可实现的保真度。相反,与刺激单个神经元相比,单电极神经刺激不会引起任何容量不足。

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