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Generative models of rich clubs in Hebbian neuronal networks and large-scale human brain networks

机译:Hebbian神经网络和大规模人脑网络中的丰富俱乐部的生成模型

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摘要

Rich clubs arise when nodes that are ‘rich’ in connections also form an elite, densely connected ‘club’. In brain networks, rich clubs incur high physical connection costs but also appear to be especially valuable to brain function. However, little is known about the selection pressures that drive their formation. Here, we take two complementary approaches to this question: firstly we show, using generative modelling, that the emergence of rich clubs in large-scale human brain networks can be driven by an economic trade-off between connection costs and a second, competing topological term. Secondly we show, using simulated neural networks, that Hebbian learning rules also drive the emergence of rich clubs at the microscopic level, and that the prominence of these features increases with learning time. These results suggest that Hebbian learning may provide a neuronal mechanism for the selection of complex features such as rich clubs. The neural networks that we investigate are explicitly Hebbian, and we argue that the topological term in our model of large-scale brain connectivity may represent an analogous connection rule. This putative link between learning and rich clubs is also consistent with predictions that integrative aspects of brain network organization are especially important for adaptive behaviour.
机译:当连接中“丰富”的节点也形成了一个精巧,紧密连接的“俱乐部”时,就会产生丰富的俱乐部。在大脑网络中,富裕的俱乐部会产生高昂的身体连接成本,但似乎对大脑功能特别有价值。但是,对于驱动其形成的选择压力知之甚少。在这里,我们采用两种互补的方法来解决这个问题:首先,我们通过生成模型证明,大型人脑网络中富裕俱乐部的出现可以由连接成本与第二种竞争性拓扑之间的经济权衡来驱动。术语。其次,我们使用模拟神经网络显示,希伯来族的学习规则也在微观层面上推动了富人俱乐部的出现,并且这些特征的重要性随着学习时间的增加而增加。这些结果表明,Hebbian学习可能为选择诸如富人俱乐部之类的复杂功能提供了一种神经元机制。我们研究的神经网络明确是Hebbian,我们认为在大规模大脑连接模型中的拓扑术语可能表示类似的连接规则。学习和富裕俱乐部之间的这种假定联系也与以下预测相一致:大脑网络组织的整合方面对于适应性行为特别重要。

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