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首页> 外文期刊>Journal of Biological Physics >Fitting of dynamic recurrent neural network models to sensory stimulus-response data
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Fitting of dynamic recurrent neural network models to sensory stimulus-response data

机译:拟合动态复发性神经网络模型对感觉刺激 - 响应数据

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摘要

We present a theoretical study aiming at model fitting for sensory neurons. Conventional neural network training approaches are not applicable to this problem due to lack of continuous data. Although the stimulus can be considered as a smooth time-dependent variable, the associated response will be a set of neural spike timings (roughly the instants of successive action potential peaks) that have no amplitude information. A recurrent neural network model can be fitted to such a stimulus-response data pair by using the maximum likelihood estimation method where the likelihood function is derived from Poisson statistics of neural spiking. The universal approximation feature of the recurrent dynamical neuron network models allows us to describe excitatory-inhibitory characteristics of an actual sensory neural network with any desired number of neurons. The stimulus data are generated by a phased cosine Fourier series having a fixed amplitude and frequency but a randomly shot phase. Various values of amplitude, stimulus component size, and sample size are applied in order to examine the effect of the stimulus to the identification process. Results are presented in tabular and graphical forms at the end of this text. In addition, to demonstrate the success of this research, a study involving the same model, nominal parameters and stimulus structure, and another study that works on different models are compared to that of this research.
机译:我们展示了一个旨在为感官神经元的模型配件的理论研究。由于缺乏连续数据,传统的神经网络训练方法不适用于此问题。尽管刺激可以被认为是平滑的时间依赖变量,但是相关的响应将是没有幅度信息的一组神经峰值定时(大致是连续动作电位峰的时刻)。通过使用最大似然估计方法,可以使用最大似然函数衍生自神经尖峰的泊松统计。复发性动态神经元网络模型的通用近似特征使我们能够描述具有任何所需数量的神经元的实际感官神经网络的兴奋性抑制特征。刺激数据由相控余弦傅里叶串产生,其具有固定幅度和频率但随机拍摄的阶段。施加各种幅度,刺激部件尺寸和样本大小以检查刺激对识别过程的效果。结果在本文末尾以表格和图形形式呈现。此外,为了展示本研究的成功,涉及相同模型,标称参数和刺激结构的研究,以及在该研究的情况下与不同模型工作的另一个研究。

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