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不对称网络与对称网络之间的计算差异。

Computational differences between asymmetrical and symmetrical networks.

作者信息

Li Z, Dayan P

机构信息

Gatsby Computational Neuroscience Unit, University College, London, UK.

出版信息

Network. 1999 Feb;10(1):59-77.

Abstract

Symmetrically connected recurrent networks have recently been used as models of a host of neural computations. However, biological neural networks have asymmetrical connections, at the very least because of the separation between excitatory and inhibitory neurons in the brain. We study characteristic differences between asymmetrical networks and their symmetrical counterparts in cases for which they act as selective amplifiers for particular classes of input patterns. We show that the dramatically different dynamical behaviours to which they have access, often make the asymmetrical networks computationally superior. We illustrate our results in networks that selectively amplify oriented bars and smooth contours in visual inputs.

摘要

对称连接的递归网络最近已被用作许多神经计算的模型。然而,生物神经网络具有不对称连接,至少是因为大脑中兴奋性神经元和抑制性神经元之间的分离。我们研究了不对称网络与其对称对应网络在作为特定类输入模式的选择性放大器的情况下的特征差异。我们表明,它们所具有的截然不同的动力学行为,往往使不对称网络在计算上更具优势。我们在选择性放大视觉输入中的定向条和光滑轮廓的网络中说明了我们的结果。

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