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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Spontaneous scale-free structure of spike flow graphs in recurrent neural networks.
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Spontaneous scale-free structure of spike flow graphs in recurrent neural networks.

机译:循环神经网络中尖峰流图的自发无标度结构。

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In this paper we introduce a simple and mathematically tractable model of an asynchronous spiking neural network which to some extent generalizes the concept of a Boltzmann machine. In our model we let the units contain a certain (possibly unbounded) charge, which can be exchanged with other neurons under stochastic dynamics. The model admits a natural energy functional determined by weights assigned to neuronal connections such that positive weights between two units favor agreement of their states whereas negative weights favor disagreement. We analyze energy minima (ground states) of the presented model and the graph of charge transfers between the units in the course of the dynamics where each edge is labeled with the count of unit charges (spikes) it transmitted. We argue that for independent Gaussian weights in low enough temperature the large-scale behavior of the system admits an accurate description in terms of a winner-take-all type dynamics which can be used for showing that the resulting graph of charge transfers, referred to as the spike flow graph in the sequel, has scale-free properties with power law exponent gamma=2. Whereas the considered neural network model may be perceived to some extent simplistic, its asymptotic description in terms of a winner-take-all type dynamics and hence also the scale-free nature of the spike flow graph seem to be rather universal as suggested both by a theoretical argument and by numerical evidence for various neuronal models. As establishing the presence of scale-free self-organization for neural models, our results can also be regarded as one more justification for considering neural networks based on scale-free graph architectures.
机译:在本文中,我们介绍了异步尖峰神经网络的简单且在数学上易于处理的模型,该模型在一定程度上概括了Boltzmann机器的概念。在我们的模型中,我们让单位包含一定的(可能是无界的)电荷,可以在随机动力学下与其他神经元交换这些电荷。该模型允许使用由分配给神经元连接的权重确定的自然能量函数,这样,两个单元之间的正权重有利于其状态的一致,而负权重则有利于分歧。我们分析了所提出模型的最小能量(基态)以及动力学过程中各个单元之间的电荷转移图,其中每个边缘都用其传输的单位电荷(尖峰)计数进行了标记。我们认为,对于足够低的温度下的独立高斯权重,系统的大规模行为允许以获胜者通吃型动力学的形式进行准确描述,该动力学可用于表明电荷转移的结果图称为作为续集中的峰值流量图,具有无标度特性,幂律指数gamma = 2。尽管所考虑的神经网络模型可能在某种程度上被认为是简单的,但就赢家通吃型动力学而言,它的渐近描述以及因此尖峰流图的无标度性质似乎相当普遍,正如这两个建议所表明的那样。理论论证和各种神经元模型的数字证据。随着建立用于神经模型的无标度自组织的存在,我们的结果也可以被视为考虑基于无标度图体系结构的神经网络的另一种理由。

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