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Homeostatic plasticity improves signal propagation in continuous-time recurrent neural networks

机译:稳态可塑性改善了连续时间递归神经网络中的信号传播

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摘要

Continuous-time recurrent neural networks (CTRNNs) are potentially an excellent substrate for the generation of adaptive behaviour in artificial autonomous agents. However, node saturation effects in these networks can leave them insensitive to input and stop signals from propagating. Node saturation is related to the problems of hyper-excitation and quiescence in biological nervous systems, which are thought to be avoided through the existence of homeostatic plastic mechanisms. Analogous mechanisms are here implemented in a variety of CTRNN architectures and are shown to increase node sensitivity and improve signal propagation, with implications for robotics. These results lend support to the view that homeostatic plasticity may prevent quiescence and hyper-excitation in biological nervous systems.
机译:连续时间递归神经网络(CTRNN)可能是在人工自治代理中生成自适应行为的极好基础。但是,这些网络中的节点饱和效应可能会使它们对输入信号和传播信号不敏感。节点饱和与生物神经系统中的过度兴奋和静止问题有关,认为可以通过存在稳态塑性机制来避免。这里在各种CTRNN架构中实现了类似的机制,并显示出这种机制可提高节点灵敏度并改善信号传播,这对机器人技术具有重要意义。这些结果支持以下观点:稳态可塑性可以防止生物神经系统的静止和过度兴奋。

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