首页> 外文会议>Annual Computational Neuroscience Meeting(CNS'02); 20020721-20020725; Chicago,IL; US >Self-sustained activity in networks of gain-modulated neurons
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Self-sustained activity in networks of gain-modulated neurons

机译:增益调节神经元网络中的自我维持活动

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Simulation studies have shown that recurrently connected neurons are capable of sustaining non-uniform profiles of activity in the absence of tuned input. These attractor networks are the basis for models of working memory and other processes where information about transient stimuli is stored temporarily. In addition, there is strong evidence that neurons often interact by affecting each other's gain. Here I study a minimal recurrent network that takes gain interactions into account. I show analytically that, in agreement with results of computer simulations, a center-surround organization gives rise to two types of stable solutions: a uniform state in which all neurons fire at the same rate, and a self-sustained profile of activity that may be centered at any point in the network. This theoretical framework based on nonlinear neuronal interactions is, in general, a powerful tool for investigating recurrent network dynamics.
机译:仿真研究表明,在没有调整输入的情况下,反复连接的神经元能够维持活动的不均匀分布。这些吸引网络是工作记忆和其他过程模型的基础,其中暂时存储有关瞬态刺激的信息。此外,有充分的证据表明神经元经常通过影响彼此的增益而相互作用。在这里,我研究了一个最小的递归网络,该网络考虑了增益相互作用。我分析地表明,与计算机模拟的结果一致,中心围绕的组织产生了两种类型的稳定解决方案:一种统一状态,其中所有神经元均以相同的速率激发;以及一种自我维持的活动状态,可能集中在网络中的任何一点。通常,这种基于非线性神经元相互作用的理论框架是研究循环网络动力学的强大工具。

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