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A financial network perspective of financial institutions' systemic risk contributions

机译:从金融网络角度看金融机构的系统性风险贡献

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This study considers the effects of the financial institutions' local topology structure in the financial network on their systemic risk contribution using data from the Chinese stock market. We first measure the systemic risk contribution with the Conditional Value-at-Risk (CoVaR) which is estimated by applying dynamic conditional correlation multivariate GARCH model (DCC-MVGARCH). Financial networks are constructed from dynamic conditional correlations (DCC) with graph filtering method of minimum spanning trees (MSTs). Then we investigate dynamics of systemic risk contributions of financial institution. Also we study dynamics of financial institution's local topology structure in the financial network. Finally, we analyze the quantitative relationships between the local topology structure and systemic risk contribution with panel data regression analysis. We find that financial institutions with greater node strength, larger node betweenness centrality, larger node closeness centrality and larger node clustering coefficient tend to be associated with larger systemic risk contributions. (C) 2016 Elsevier B.V. All rights reserved.
机译:本研究使用来自中国股票市场的数据,考虑了金融机构在金融网络中的局部拓扑结构对其系统性风险贡献的影响。我们首先使用条件风险值(CoVaR)来衡量系统性风险贡献,该条件值是通过应用动态条件相关多元GARCH模型(DCC-MVGARCH)来估算的。金融网络是根据动态条件相关(DCC)和最小生成树(MST)的图过滤方法构建的。然后,我们研究了金融机构系统性风险贡献的动态。我们还研究了金融网络中金融机构本地拓扑结构的动态。最后,我们通过面板数据回归分析来分析局部拓扑结构和系统性风险贡献之间的定量关系。我们发现,具有更大节点强度,更大节点中间度,更大节点紧密度中心和更大节点聚类系数的金融机构往往与更大的系统风险贡献相关联。 (C)2016 Elsevier B.V.保留所有权利。

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