Ideomotor feedback control in a recurrent neural network

被引:0
作者
Mathieu Galtier
机构
[1] Minds,
[2] Jacobs University Bremen,undefined
[3] NeuroMathComp,undefined
[4] Inria Sophia,undefined
[5] UNIC,undefined
[6] CNRS,undefined
来源
Biological Cybernetics | 2015年 / 109卷
关键词
Recurrent neural network; Echo state network; Feedback control; Recursive least squares;
D O I
暂无
中图分类号
学科分类号
摘要
The architecture of a neural network controlling an unknown environment is presented. It is based on a randomly connected recurrent neural network from which both perception and action are simultaneously read and fed back. There are two concurrent learning rules implementing a sort of ideomotor control: (i) perception is learned along the principle that the network should predict reliably its incoming stimuli; (ii) action is learned along the principle that the prediction of the network should match a target time series. The coherent behavior of the neural network in its environment is a consequence of the interaction between the two principles. Numerical simulations show a promising performance of the approach, which can be turned into a local and better “biologically plausible” algorithm.
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页码:363 / 375
页数:12
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