McDonnell Mark D, Stocks Nigel G, Abbott Derek
School of Electrical and Electronic Engineering & Centre for Biomedical Engineering, The University of Adelaide, South Australia 5005, Australia.
Phys Rev E Stat Nonlin Soft Matter Phys. 2007 Jun;75(6 Pt 1):061105. doi: 10.1103/PhysRevE.75.061105. Epub 2007 Jun 6.
Suprathreshold stochastic resonance (SSR) is a form of noise-enhanced signal transmission that occurs in a parallel array of independently noisy identical threshold nonlinearities, including model neurons. Unlike most forms of stochastic resonance, the output response to suprathreshold random input signals of arbitrary magnitude is improved by the presence of even small amounts of noise. In this paper, the information transmission performance of SSR in the limit of a large array size is considered. Using a relationship between Shannon's mutual information and Fisher information, a sufficient condition for optimality, i.e., channel capacity, is derived. It is shown that capacity is achieved when the signal distribution is Jeffrey's prior, as formed from the noise distribution, or when the noise distribution depends on the signal distribution via a cosine relationship. These results provide theoretical verification and justification for previous work in both computational neuroscience and electronics.
阈上随机共振(SSR)是一种噪声增强信号传输形式,它发生在包括模型神经元在内的由独立噪声相同阈值非线性组成的并行阵列中。与大多数随机共振形式不同,即使存在少量噪声,对任意幅度的阈上随机输入信号的输出响应也会得到改善。本文考虑了在大阵列规模极限下SSR的信息传输性能。利用香农互信息和费希尔信息之间的关系,推导了最优性的充分条件,即信道容量。结果表明,当信号分布是由噪声分布形成的杰弗里先验分布时,或者当噪声分布通过余弦关系依赖于信号分布时,可实现容量。这些结果为计算神经科学和电子学领域以前的工作提供了理论验证和依据。