基于拉普拉斯矩阵谱半径特征向量的中心性测度在Leader识别中的应用

F. Bateman, F. Niel
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引用次数: 0

摘要

中心性度量评估图中顶点的重要性。在多智能体框架(即机器人群)中,计算这些指标可能有助于识别领导者。作为第一步,本文在分析拉普拉斯矩阵的最大特征值所对应的特征向量的基础上,讨论了一个中心性度量。对于所研究的图类,这种中心性度量突出了连接最多的顶点,这也与最大的结合能相关。结果建立在树的互补上。对于这些高度连接的图,最流行的中心性度量很难区分一个重要的顶点。相反,拟议的指标明显突出了这一点。第二步,对于自治代理网络,以分散的方式解决基于该中心性度量的领导者识别问题。所有的代理人合作指定他们的领袖。计算是在频域进行的,并基于最大共识函数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Centrality Measure Based on the Laplacian Matrix Spectral Radius Eigenvector Application to the Identification of a Leader
Centrality measures evaluate the importance of vertices in a graph. In a multi-agent framework i.e. robots swarm, computing these indicators may be useful in identifying a leader. As a first step, the paper deals with a centrality measure based on the analysis of the eigenvector associated with the largest eigenvalue of the Laplacian matrix. For the studied class of graphs, this centrality measure highlights the most connected vertex which is also associated with the largest binding energy. The results are established for complement of trees. For these highly connected graphs, the most popular centrality measures make hard to distinguish an important vertex. On the contrary, the proposed indicator distinctly highlights this vertex. As a second step, for a network of autonomous agents, the leader identification problem based on this centrality measure is solved in a decentralized way. All the agents cooperate to appoint their leader. The calculations are conducted in the frequency domain and are based on maximum-consensus functions.
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