Convergence analysis of the Brain-state-in-a-Box(BSB) model with delay

X. Qiu, S. Qiu
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引用次数: 1

Abstract

In this paper, theoretical analysis proves the convergence properties of the brain-state-in-a-box (BSB) models with delay. We propose a convergence theorem of the BSB with delay, generalized the BSB without delay, while all previous studies on this model without delay assumed that symmetric and quasi-symmetric. We have performed a detailed convergence analysis of this network and found convergence theorem under proper assumptions of the weight matrices of this network. One is non-symmetric and the other is row diagonal dominant. Meanwhile, the updating process is presented by a newly given updating rule. Theoretical analysis demonstrates that the BSB with delay performs much better than the original one in updating to an equilibrium point, and its updating rate is four times higher than that of the original BSB.
脑-状态-盒(BSB)模型的收敛性分析
本文通过理论分析证明了具有时滞的脑状态盒(BSB)模型的收敛性。我们提出了一个有时滞的BSB的收敛定理,推广了无时滞的BSB,而以往关于该无时滞模型的研究都假设了对称和拟对称。对该网络进行了详细的收敛性分析,并在适当的权矩阵假设下得到了收敛性定理。一个是非对称的,另一个是行对角占优的。同时,通过新给出的更新规则来描述更新过程。理论分析表明,有延迟的BSB比原BSB更新到平衡点的性能好得多,更新速率是原BSB的4倍。
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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