资产相关性网络的自适应中心性测量方法

IF 2.1 Q2 ECONOMICS
Paolo Bartesaghi, Gian Paolo Clemente, Rosanna Grassi
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引用次数: 0

摘要

我们提出了一种基于自适应流行病模型的新中心度量方法,该模型的特点是节点间信息传递的内生强化机制。我们提供了一种为节点分配中心性得分的策略,在特征向量中心性方案中,该得分取决于与之相连的所有网络元素、节点和边的中心性得分。我们将这一得分参数化为强化因子的函数,首次实现了节点网络与边缘网络之间的互动强度。在这一建议中,代表扩散过程稳定状态的局部中心度量包含了整个网络中的全局信息。事实证明,这种测量方法能有效识别社会网络中谣言/冲击/行为传播过程中最具影响力的节点。在金融网络的背景下,它允许我们突出相关网络中的战略资产。图和线图之间耦合因子的依赖性也使我们能够在排序方面对不同的资产做出反应,尤其是在从相关网络中以最小生成树形式获得的无标度网络上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Self-Adaptive Centrality Measure for Asset Correlation Networks
We propose a new centrality measure based on a self-adaptive epidemic model characterized by an endogenous reinforcement mechanism in the transmission of information between nodes. We provide a strategy to assign to nodes a centrality score that depends, in an eigenvector centrality scheme, on that of all the elements of the network, nodes and edges, connected to it. We parameterize this score as a function of a reinforcement factor, which for the first time implements the intensity of the interaction between the network of nodes and that of the edges. In this proposal, a local centrality measure representing the steady state of a diffusion process incorporates the global information encoded in the whole network. This measure proves effective in identifying the most influential nodes in the propagation of rumors/shocks/behaviors in a social network. In the context of financial networks, it allows us to highlight strategic assets on correlation networks. The dependence on a coupling factor between graph and line graph also enables the different asset responses in terms of ranking, especially on scale-free networks obtained as minimum spanning trees from correlation networks.
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来源期刊
Economies
Economies Economics, Econometrics and Finance-Economics, Econometrics and Finance (miscellaneous)
CiteScore
4.00
自引率
11.50%
发文量
271
审稿时长
11 weeks
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