Short term memory by transient oscillatory dynamics in recurrent neural networks

K. Ichikawa, K. Kaneko
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引用次数: 5

Abstract

Despite the importance of short-term memory in cognitive function, how the input information is encoded and sustained in neural activity dynamics remains elusive. Here, by training recurrent neural networks to short-term memory tasks and analyzing the dynamics, the characteristic of the short-term memory mechanism was obtained in which the input information was encoded in the amplitude of transient oscillation, rather than the stationary neural activities. This transient orbit was attracted to a slow manifold, which allowed for the discarding of irrelevant information. Strong contraction to the manifold results in the noise robustness of the transient orbit, accordingly to the memory. The generality of the result and its relevance to neural information processing were discussed.
递归神经网络的瞬态振荡动态短时记忆
尽管短期记忆在认知功能中的重要性,但输入信息如何在神经活动动力学中被编码和维持仍然是一个谜。本文通过对递归神经网络短期记忆任务的训练和动态分析,得到了递归神经网络短期记忆机制的特征,即输入信息编码在瞬态振荡振幅中,而不是固定的神经活动中。这个短暂的轨道被吸引到一个缓慢的流形上,这允许丢弃不相关的信息。对流形的强收缩使暂态轨道的噪声具有鲁棒性,与记忆性相适应。讨论了结果的通用性及其与神经信息处理的相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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