Rudd M E, Brown L G
Department of Psychology, Johns Hopkins University, Baltimore, Maryland 21218, USA.
Neural Comput. 1997 Jul 1;9(5):1047-69. doi: 10.1162/neco.1997.9.5.1047.
The statistical spiking response of an ensemble of identically prepared stochastic integrate-and-fire neurons to a rectangular input current plus gaussian white noise is analyzed. It is shown that, on average, integrate-and-fire neurons adapt to the root-mean-square noise level of their input. This phenomenon is referred to as noise adaptation. Noise adaptation is characterized by a decrease in the average neural firing rate and an accompanying decrease in the average value of the generator potential, both of which can be attributed to noise-induced resets of the generator potential mediated by the integrate-and-fire mechanism. A quantitative theory of noise adaptation in stochastic integrate-and-fire neurons is developed. It is shown that integrate-and-fire neurons, on average, produce transient spiking activity whenever there is an increase in the level of their input noise. This transient noise response is either reduced or eliminated over time, depending on the parameters of the model neuron. Analytical methods are used to prove that nonleaky integrate-and-fire neurons totally adapt to any constant input noise level, in the sense that their asymptotic spiking rates are independent of the magnitude of their input noise. For leaky integrate-and-fire neurons, the long-run noise adaptation is not total, but the response to noise is partially eliminated. Expressions for the probability density function of the generator potential and the first two moments of the potential distribution are derived for the particular case of a nonleaky neuron driven by gaussian white noise of mean zero and constant variance. The functional significance of noise adaptation for the performance of networks comprising integrate-and-fire neurons is discussed.
分析了一组相同制备的随机积分发放神经元对矩形输入电流加高斯白噪声的统计发放响应。结果表明,平均而言,积分发放神经元会适应其输入的均方根噪声水平。这种现象被称为噪声适应。噪声适应的特征是平均神经发放率降低以及伴随的发生器电位平均值下降,这两者都可归因于由积分发放机制介导的噪声诱导的发生器电位重置。发展了随机积分发放神经元中噪声适应的定量理论。结果表明,平均而言,每当积分发放神经元的输入噪声水平增加时,它们就会产生瞬态发放活动。这种瞬态噪声响应会随着时间的推移而减弱或消除,这取决于模型神经元的参数。使用分析方法证明,在非泄漏积分发放神经元的渐近发放率与输入噪声大小无关的意义上,它们会完全适应任何恒定的输入噪声水平。对于泄漏积分发放神经元,长期噪声适应并不完全,但对噪声的响应会部分消除。针对由均值为零且方差恒定的高斯白噪声驱动的非泄漏神经元的特定情况,推导了发生器电位的概率密度函数以及电位分布的前两个矩的表达式。讨论了噪声适应对包含积分发放神经元的网络性能的功能意义。