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Analysis and applications of spectral properties of grounded Laplacian matrices for directed networks

机译:针向网络接地拉普拉斯矩阵光谱特性的分析与应用

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In-depth understanding of the spectral properties of grounded Laplacian matrices is critical for the analysis of convergence speeds of dynamical processes over complex networks, such as opinion dynamics in social networks with stubborn agents. We focus on grounded Laplacian matrices for directed graphs and show that their eigenvalues with the smallest real part must be real. Lower and upper bounds for such eigenvalues are provided utilizing tools from nonnegative matrix theory. For those eigenvectors corresponding to such eigenvalues, we discuss two cases when we can identify the vertex that corresponds to the smallest eigenvector component. We then discuss an application in leader-follower social networks where the grounded Laplacian matrices arise naturally. With the knowledge of the vertex corresponding to the smallest eigenvector component for the smallest eigenvalue, we prove that by removing or weakening specific directed couplings pointing to the vertex having the smallest eigenvector component, all the states of the other vertices converge faster to that of the leading vertex. This result is in sharp contrast to the well-known fact that when the vertices are connected together through undirected links, removing or weakening links does not accelerate and in general decelerates the converging process. (C) 2017 Elsevier Ltd. All rights reserved.
机译:对接地拉普拉斯矩阵的光谱性质的深入理解对于分析复杂网络的动态过程的收敛速度至关重要,例如具有顽固剂的社交网络中的观点动态。我们专注于针对定向图的接地拉普拉斯矩阵,并表明他们的特征值与最小的真实部位必须是真实的。利用来自非负矩阵理论的工具提供这种特征值的下界和上限。对于对应于此类特征值的那些特征向量,我们讨论了两种情况,我们可以识别对应于最小特征向量组件的顶点。然后,我们讨论了在领导者 - 跟随者社交网络中的应用程序,其中基础拉普拉斯矩阵自然出现。随着对应于最小特征值的最小特征向量组件的顶点的知识,我们证明了通过去除或削弱指向具有最小的特征向量分量的顶点的特定定向耦合,另一个顶点的所有状态都将更快地收敛到主角顶点。该结果与众所周知的事实鲜明对比,当顶点通过无向链接连接在一起时,去除或削弱链接不会加速,并且通常减少融合过程。 (c)2017 Elsevier Ltd.保留所有权利。

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