School of Economics, Zhengzhou University of Aeronautics, Zhengzhou, China.
PLoS One. 2020 Mar 6;15(3):e0229913. doi: 10.1371/journal.pone.0229913. eCollection 2020.
This study presents financial network indicators that can be applied to inspect the financial contagion on real economy, as well as the spatial spillover and industry aggregation effects. We propose to design both a directed and undirected networks of financial sectors of top 20 countries in GDP based on symbolized transfer entropy and Pearson correlation coefficients. We examine the effect and usefulness of the network indicators by newly using them instead of the original Dow Jones financial sector as explanatory variables to construct the higher-order information spatial econometric models. The results demonstrate that the estimated accuracies obtained from both the two networks are improved significantly compared with the spatial econometric model using the original data. It indicates that the network indictors are more effective to capture the dynamic information of financial systems. And meanwhile, the accuracy based on the directed network is a little higher than the undirected network, which indicates the symbolized transfer entropy, i.e. the directed and weighted network, is more suitable and effective to reflect relationships in the financial field. In addition, the results also show that under the global financial crisis, the co-movement between financial sectors of a country/region and the global financial sector as well as between financial sectors and real economy sectors is increased. However, some sectors in particular Utilities and Healthcare are impacted slightly. This study tries to use the financial network indicators in modeling to study contagion channels on the real economy and the industry aggregation effects and suggest how network indicators can be practically used in financial fields.
本研究提出了可用于检查金融对实体经济的传染、空间溢出和产业集聚效应的金融网络指标。我们建议基于符号化转移熵和皮尔逊相关系数,为 GDP 排名前 20 的国家的金融部门构建有向和无向网络。我们通过使用网络指标来构建高阶信息空间计量经济学模型,而不是使用原始道琼斯金融部门作为解释变量,来检验网络指标的效果和有用性。结果表明,与使用原始数据的空间计量经济学模型相比,两个网络的估计精度都得到了显著提高。这表明网络指标能够更有效地捕捉金融系统的动态信息。同时,基于有向网络的精度略高于无向网络,这表明符号化转移熵(即有向和加权网络)更适合和有效地反映金融领域的关系。此外,结果还表明,在全球金融危机下,一个国家/地区的金融部门与全球金融部门以及金融部门与实体经济部门之间的共同运动增加了。然而,一些特定部门(如公用事业和医疗保健)受到的影响较小。本研究试图在建模中使用金融网络指标来研究实体经济的传染渠道和产业集聚效应,并提出网络指标如何在金融领域实际应用。