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回声状态网络谱半径的局部稳态调节

Local Homeostatic Regulation of the Spectral Radius of Echo-State Networks.

作者信息

Schubert Fabian, Gros Claudius

机构信息

Institute for Theoretical Physics, Goethe University Frankfurt am Main, Frankfurt am Main, Germany.

出版信息

Front Comput Neurosci. 2021 Feb 24;15:587721. doi: 10.3389/fncom.2021.587721. eCollection 2021.

Abstract

Recurrent cortical networks provide reservoirs of states that are thought to play a crucial role for sequential information processing in the brain. However, classical reservoir computing requires manual adjustments of global network parameters, particularly of the spectral radius of the recurrent synaptic weight matrix. It is hence not clear if the spectral radius is accessible to biological neural networks. Using random matrix theory, we show that the spectral radius is related to local properties of the neuronal dynamics whenever the overall dynamical state is only weakly correlated. This result allows us to introduce two local homeostatic synaptic scaling mechanisms, termed flow control and variance control, that implicitly drive the spectral radius toward the desired value. For both mechanisms the spectral radius is autonomously adapted while the network receives and processes inputs under working conditions. We demonstrate the effectiveness of the two adaptation mechanisms under different external input protocols. Moreover, we evaluated the network performance after adaptation by training the network to perform a time-delayed XOR operation on binary sequences. As our main result, we found that flow control reliably regulates the spectral radius for different types of input statistics. Precise tuning is however negatively affected when interneural correlations are substantial. Furthermore, we found a consistent task performance over a wide range of input strengths/variances. Variance control did however not yield the desired spectral radii with the same precision, being less consistent across different input strengths. Given the effectiveness and remarkably simple mathematical form of flow control, we conclude that self-consistent local control of the spectral radius via an implicit adaptation scheme is an interesting and biological plausible alternative to conventional methods using set point homeostatic feedback controls of neural firing.

摘要

循环皮质网络提供了状态储备,这些储备被认为在大脑的序列信息处理中起着至关重要的作用。然而,传统的储备计算需要手动调整全局网络参数,特别是循环突触权重矩阵的谱半径。因此,尚不清楚生物神经网络是否能够获取谱半径。利用随机矩阵理论,我们表明,只要整体动力学状态仅存在弱相关性,谱半径就与神经元动力学的局部性质相关。这一结果使我们能够引入两种局部稳态突触缩放机制,即流量控制和方差控制,它们能隐式地将谱半径驱动至所需值。对于这两种机制,在网络在工作条件下接收和处理输入时,谱半径会自动调整。我们展示了这两种自适应机制在不同外部输入协议下的有效性。此外,我们通过训练网络对二进制序列执行延时异或运算,评估了自适应后的网络性能。作为我们的主要结果,我们发现流量控制能够可靠地调节不同类型输入统计下的谱半径。然而,当神经间相关性显著时,精确调谐会受到负面影响。此外,我们发现在广泛的输入强度/方差范围内,任务性能保持一致。然而,方差控制未能以相同的精度产生所需的谱半径,在不同输入强度下的一致性较差。鉴于流量控制的有效性和极其简单的数学形式,我们得出结论,通过隐式自适应方案对谱半径进行自洽局部控制,是一种有趣且具有生物学合理性的替代方法,可替代使用神经放电的设定点稳态反馈控制的传统方法。

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