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Multi-index algorithm of identifying important nodes in complex networks based on linear discriminant analysis

机译:基于线性判别分析的复杂网络中重要节点识别的多指标算法

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摘要

The evaluation of node importance has great significance to complex network, so it is important to seek and protect important nodes to ensure the security and stability of the entire network. At present, most evaluation algorithms of node importance adopt the single-index methods, which are incomplete and limited, and cannot fully reflect the complex situation of network. In this paper, after synthesizing multi-index factors of node importance, including eigenvector centrality, betweenness centrality, closeness centrality, degree centrality, mutual-information, etc., the authors are proposing a new multi-index evaluation algorithm of identifying important nodes in complex networks based on linear discriminant analysis (LDA). In order to verify the validity of this algorithm, a series of simulation experiments have been done. Through comprehensive analysis, the simulation results show that the new algorithm is more rational, effective, integral and accurate.
机译:节点重要性的评估对于复杂的网络具有重要意义,因此寻找和保护重要节点对于确保整个网络的安全性和稳定性非常重要。目前,大多数节点重要性评估算法都采用单指标方法,这种方法不完善且局限,不能完全反映网络的复杂情况。本文综合了特征向量中心性,中间性中心性,紧密性中心性,度中心性,互信息性等节点重要性的多指标因子,提出了一种新的识别指标重要节点的多指标评价算法。基于线性判别分析(LDA)的复杂网络。为了验证该算法的有效性,已经进行了一系列的仿真实验。通过综合分析,仿真结果表明该算法更加合理,有效,完整,准确。

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