首页> 外文会议>ISNN 2011;International symposium on neural networks >Detecting the Topology of a Neural Network from Partially Obtained Data Using Piecewise Granger Causality
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Detecting the Topology of a Neural Network from Partially Obtained Data Using Piecewise Granger Causality

机译:使用分段Granger因果关系从部分获得的数据中检测神经网络的拓扑

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The dynamics and function of a network are influenced by the topology of the network. A great need exists for the development of effective methods of inferring network structure. In the past few years, topology identification of complex networks has received intensive interest and quite a few works have been published in literature. However, in most of the publications, each state of a multidimensional node in the network has to be observable, and usually the nodal dynamics is assumed known. In this paper, a new method of recovering the underlying directed connections of a network from the observation of only one state of each node is proposed. The validity of the proposed approach is illustrated with a coupled FitzHugh-Nagumo neurobiological network by only observing the membrane potential of each neuron and found to outperform the traditional Granger causality method. The network coupling strength and noise intensity which might also affect the effectiveness of our method are further analyzed.
机译:网络的动态和功能受网络拓扑的影响。迫切需要开发推断网络结构的有效方法。在过去的几年中,复杂网络的拓扑识别引起了广泛的关注,并且在文献中已经发表了许多著作。但是,在大多数出版物中,网络中多维节点的每个状态都必须是可观察的,并且通常假定节点动力学是已知的。在本文中,提出了一种从仅观察每个节点的状态来恢复网络的基础定向连接的新方法。通过仅观察每个神经元的膜电位,并通过耦合的FitzHugh-Nagumo神经生物学网络说明了该方法的有效性,发现该方法优于传统的Granger因果关系方法。网络耦合强度和噪声强度也可能影响我们方法的有效性。

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