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Energy-efficient population coding constrains network size of a neuronal array system

机译:节能人口编码限制了神经元阵列系统的网络尺寸

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We consider the open issue of how the energy efficiency of the neural information transmission process, in a general neuronal array, constrains the network size, and how well this network size ensures the reliable transmission of neural information in a noisy environment. By direct mathematical analysis, we have obtained general solutions proving that there exists an optimal number of neurons in the network, where the average coding energy cost (defined as energy consumption divided by mutual information) per neuron passes through a global minimum for both subthreshold and superthreshold signals. With increases in background noise intensity, the optimal neuronal number decreases for subthreshold signals and increases for suprathreshold signals. The existence of an optimal number of neurons in an array network reveals a general rule for population coding that states that the neuronal number should be large enough to ensure reliable information transmission that is robust to the noisy environment but small enough to minimize energy cost.
机译:我们考虑如何在通用神经元阵列中的神经信息传输过程的能量效率如何限制网络尺寸,以及该网络大小确保在嘈杂环境中的神经信息可靠地传输的方式。通过直接数学分析,我们已经获得了一般的解决方案,证明了网络中存在最佳的神经元数,其中每个神经元的平均编码能量成本(定义为互能除以互能量的能耗)通过全局最小的亚阈值和SuperThreshold信号。随着背景噪声强度的增加,最佳神经元数对于亚阈值信号而减小并增加Suprathreshold信号。阵列网络中最佳的神经元数的存在揭示了人口编码的一般规则,使得神经元数应该足够大,以确保对嘈杂环境具有坚固但足够小以最小化能量成本的可靠信息传输。

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