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Optimum neural tuning curves for information efficiency with rate coding and finite-time window

机译:最优神经调节曲线通过速率编码和有限时间窗口提高信息效率

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摘要

An important question for neural encoding is what kind of neural systems can convey more information with less energy within a finite time coding window. This paper first proposes a finite-time neural encoding system, where the neurons in the system respond to a stimulus by a sequence of spikes that is assumed to be Poisson process and the external stimuli obey normal distribution. A method for calculating the mutual information of the finite-time neural encoding system is proposed and the definition of information efficiency is introduced. The values of the mutual information and the information efficiency obtained by using Logistic function are compared with those obtained by using other functions and it is found that Logistic function is the best one. It is further found that the parameter representing the steepness of the Logistic function has close relationship with full entropy, and that the parameter representing the translation of the function associates with the energy consumption and noise entropy tightly. The optimum parameter combinations for Logistic function to maximize the information efficiency are calculated when the stimuli and the properties of the encoding system are varied respectively. Some explanations for the results are given. The model and the method we proposed could be useful to study neural encoding system, and the optimum neural tuning curves obtained in this paper might exhibit some characteristics of a real neural system.
机译:神经编码的一个重要问题是,哪种神经系统可以在有限的时间编码窗口内以更少的能量传达更多的信息。本文首先提出了一种有限时间神经编码系统,其中系统中的神经元通过一系列假定为泊松过程且外部刺激服从正态分布的尖峰响应刺激。提出了一种有限时间神经编码系统互信息的计算方法,并介绍了信息效率的定义。比较使用Logistic函数获得的互信息值和信息效率与使用其他函数获得的互信息值和信息效率,发现Logistic函数是最好的。进一步发现,代表逻辑函数陡度的参数与全部熵有密切关系,代表函数平移的参数与能量消耗和噪声熵紧密相关。当刺激和编码系统的属性分别发生变化时,计算出用于Logistic函数以最大化信息效率的最佳参数组合。给出了一些结果的解释。我们提出的模型和方法可能对研究神经编码系统很有用,本文获得的最优神经调节曲线可能具有真实神经系统的某些特征。

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