Kumar Sunil, Deo Nivedita
Department of Physics & Astrophysics, University of Delhi, Delhi-110007, India.
Phys Rev E Stat Nonlin Soft Matter Phys. 2012 Aug;86(2 Pt 2):026101. doi: 10.1103/PhysRevE.86.026101. Epub 2012 Aug 2.
Random matrix theory (RMT) and network methods are applied to investigate the correlation and network properties of 20 financial indices. The results are compared before and during the financial crisis of 2008. In the RMT method, the components of eigenvectors corresponding to the second largest eigenvalue form two clusters of indices in the positive and negative directions. The components of these two clusters switch in opposite directions during the crisis. The network analysis uses the Fruchterman-Reingold layout to find clusters in the network of indices at different thresholds. At a threshold of 0.6, before the crisis, financial indices corresponding to the Americas, Europe, and Asia-Pacific form separate clusters. On the other hand, during the crisis at the same threshold, the American and European indices combine together to form a strongly linked cluster while the Asia-Pacific indices form a separate weakly linked cluster. If the value of the threshold is further increased to 0.9 then the European indices (France, Germany, and the United Kingdom) are found to be the most tightly linked indices. The structure of the minimum spanning tree of financial indices is more starlike before the crisis and it changes to become more chainlike during the crisis. The average linkage hierarchical clustering algorithm is used to find a clearer cluster structure in the network of financial indices. The cophenetic correlation coefficients are calculated and found to increase significantly, which indicates that the hierarchy increases during the financial crisis. These results show that there is substantial change in the structure of the organization of financial indices during a financial crisis.
运用随机矩阵理论(RMT)和网络方法来研究20个金融指数的相关性和网络特性。对2008年金融危机之前和期间的结果进行了比较。在随机矩阵理论方法中,对应于第二大特征值的特征向量的分量在正负方向上形成两个指数簇。在危机期间,这两个簇的分量沿相反方向切换。网络分析使用弗鲁彻曼-雷因戈尔德布局在不同阈值下的指数网络中寻找簇。在阈值为0.6时,危机之前,对应于美洲、欧洲和亚太地区的金融指数形成单独的簇。另一方面,在危机期间,在相同阈值下,美洲和欧洲的指数合并在一起形成一个强关联的簇,而亚太地区的指数形成一个单独的弱关联簇。如果将阈值的值进一步提高到0.9,那么发现欧洲指数(法国、德国和英国)是联系最紧密的指数。金融危机之前金融指数的最小生成树结构更像星型,在危机期间它会转变为更像链型。使用平均连锁层次聚类算法在金融指数网络中找到更清晰的簇结构。计算了共亲相关系数,发现其显著增加,这表明在金融危机期间层次结构增加。这些结果表明,在金融危机期间金融指数的组织结构发生了重大变化。