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HYBRID NEURAL NETS WITH POISSON AND GAUSSIAN CONNECTIVITIES

机译:具有Poisson和高斯连通性的混合神经网络

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The dynamic behavior of neural nets with different patterns of interneuronal synaptic connectivity is investigated. Our method is based on probabilistic neural nets for the net structure and dynamics. Each net is divided into several different subsystems, which are characterized by different distribution laws for the number of connections that the neurons make. We start from the binomial distribution, which, under appropriate conditions, reduces to the Poisson and Gaussian distributions. The overall net now acquires a hybrid character. The expression for the neural activity is generalized to include this effect, and new expressions are derived, based on the isolated single-net equations. The dynamics of nets with sustained external inputs is also studied. The results obtained by this approach also show multiple stability and multiple hysteresis effects, as in the case of single nets. The differences between pure Poisson, Gaussian, and hybrid nets are explained in terms of the structural properties of the model. As expected, the hybrid case falls in between the two other distributions. Finally, we performed Monte Carlo computer calculations for the hybrid nets. For the range of parameters examined we find very good agreement with the developed formalism. [References: 14]
机译:研究了具有不同模式的神经元突触连通性的神经网络的动态行为。我们的方法基于概率神经网络的网络结构和动力学。每个网络分为几个不同的子系统,这些子系统的特征在于神经元建立连接的数量的分布规律不同。我们从二项式分布开始,在适当条件下将其简化为泊松分布和高斯分布。现在,整个网络具有混合特征。对神经活动的表达式进行了概括,以包括这种效果,并基于孤立的单网方程推导出了新的表达式。还研究了具有持续外部输入的网络的动力学。通过这种方法获得的结果也显示出多个稳定性和多个磁滞效应,就像在单个网络中一样。根据模型的结构特性解释了纯泊松网络,高斯网络和混合网络之间的差异。不出所料,混合情况介于其他两个分布之间。最后,我们对混合网络进行了蒙特卡洛计算机计算。对于所检查的参数范围,我们发现与发达的形式主义非常吻合。 [参考:14]

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