论文标题

揭示动态系统中不稳定性的起源:注意机制如何提供帮助?

Uncovering the Origins of Instability in Dynamical Systems: How Attention Mechanism Can Help?

论文作者

Bahador, Nooshin, Lankarany, Milad

论文摘要

网络的行为及其稳定性受单个节点的动态及其拓扑互连的控制。作为神经网络模型不可或缺的一部分,注意机制最初是为自然语言处理(NLP)设计的,到目前为止,在结合单个节点的动力学和网络中它们之间的耦合强度方面表现出了出色的性能。尽管注意力机制毫无疑问,但尚不清楚为什么网络的某些节点会获得更高的注意力。为了提出更多可解释的解决方案,我们试图从稳定的角度看待问题。基于稳定性理论,网络中的负连接可以通过允许信息向相反方向流动来创建反馈循环或其他复杂结构。这些结构在复杂系统的动力学中起着关键作用,并且可以有助于异常的同步,放大或抑制。我们假设那些与组织结构有关的节点可以将整个网络推向不稳定性模式,因此在分析过程中需要更高的关注。为了检验这一假设,对注意机制以及光谱和拓扑稳定性分析进行了对现实世界的数值问题进行,即,在压电管执行器的线性多输入多输出多输出状态空间模型。我们的研究结果表明,注意力应针对网络内部不平衡结构和极性驱动的结构不稳定性的集体行为。结果表明,受到更多注意力的节点在系统中会导致更多的不稳定。我们的研究提供了概念证明,以了解为什么网络的某些节点扰动可能会导致网络动态的巨大变化。

The behavior of the network and its stability are governed by both dynamics of individual nodes as well as their topological interconnections. Attention mechanism as an integral part of neural network models was initially designed for natural language processing (NLP), and so far, has shown excellent performance in combining dynamics of individual nodes and the coupling strengths between them within a network. Despite undoubted impact of attention mechanism, it is not yet clear why some nodes of a network get higher attention weights. To come up with more explainable solutions, we tried to look at the problem from stability perspective. Based on stability theory, negative connections in a network can create feedback loops or other complex structures by allowing information to flow in the opposite direction. These structures play a critical role in the dynamics of a complex system and can contribute to abnormal synchronization, amplification, or suppression. We hypothesized that those nodes that are involved in organizing such structures can push the entire network into instability modes and therefore need higher attention during analysis. To test this hypothesis, attention mechanism along with spectral and topological stability analyses was performed on a real-world numerical problem, i.e., a linear Multi Input Multi Output state-space model of a piezoelectric tube actuator. The findings of our study suggest that the attention should be directed toward the collective behaviour of imbalanced structures and polarity-driven structural instabilities within the network. The results demonstrated that the nodes receiving more attention cause more instability in the system. Our study provides a proof of concept to understand why perturbing some nodes of a network may cause dramatic changes in the network dynamics.

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