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Hamiltonian system approach to distributed spectral decomposition in networks

机译:网络中分布式频谱分解的哈密顿系统方法

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Because of the significant increase in size and complexity of the networks, the distributed computation of eigenvalues and eigenvectors of graph matrices has become very challenging and yet it remains as important as before. In this paper we develop efficient distributed algorithms to detect, with higher resolution, closely situated eigenvalues and corresponding eigenvectors of symmetric graph matrices. We model the system of graph spectral computation as physical systems with Lagrangian and Hamiltonian dynamics. The spectrum of Laplacian matrix, in particular, is framed as a classical springmass system with Lagrangian dynamics. The spectrum of any general symmetric graph matrix turns out to have a simple connection with quantum systems and it can be thus formulated as a solution to a Schr̈odinger-type differential equation. Taking into account the higher resolution requirement in the spectrum computation and the related stability issues in the numerical solution of the underlying differential equation, we propose the application of symplectic integrators to the calculation of eigenspectrum. The effectiveness of the proposed techniques is demonstrated with numerical simulations on real-world networks of different sizes and complexities.
机译:由于网络的大小和复杂性的显着增加,图矩阵的特征值和特征向量的分布式计算已变得非常具有挑战性,但仍然像以前一样重要。在本文中,我们开发了一种高效的分布式算法,可以以更高的分辨率检测对称图矩阵的紧邻特征值和相应特征向量。我们将图谱计算系统建模为具有拉格朗日动力学和哈密顿动力学的物理系统。拉普拉斯矩阵的频谱尤其被构想为具有拉格朗日动力学的经典弹簧质量系统。事实证明,任何一般对称图矩阵的频谱都与量子系统具有简单的联系,因此可以将其公式化为Schr̈odinger型微分方程的解。考虑到频谱计算中对分辨率的更高要求以及底层微分方程数值解中的相关稳定性问题,我们建议将辛辛积分器应用于特征谱的计算。所提出的技术的有效性通过在不同大小和复杂性的真实网络上的数值模拟得到了证明。

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